{"id":2822032,"date":"2025-06-16T02:20:16","date_gmt":"2025-06-16T09:20:16","guid":{"rendered":"https:\/\/www.esri.com\/arcgis-blog\/?post_type=blog&#038;p=2822032"},"modified":"2025-06-16T14:53:43","modified_gmt":"2025-06-16T21:53:43","slug":"peruvian-intelligence-fusion-a-recipe-for-multi-int-analysis-in-arcgis-allsource","status":"publish","type":"blog","link":"https:\/\/www.esri.com\/arcgis-blog\/products\/allsource\/defense\/peruvian-intelligence-fusion-a-recipe-for-multi-int-analysis-in-arcgis-allsource","title":{"rendered":"Peruvian Intelligence Fusion: A Recipe for Multi-INT Analysis in ArcGIS AllSource"},"author":312742,"featured_media":0,"parent":0,"menu_order":0,"comment_status":"open","ping_status":"closed","template":"","format":"standard","meta":{"_acf_changed":false,"_searchwp_excluded":""},"categories":[24641],"tags":[],"industry":[],"product":[764612],"class_list":["post-2822032","blog","type-blog","status-publish","format-standard","hentry","category-defense","product-allsource"],"acf":{"authors":[{"ID":372462,"user_firstname":"Jordan","user_lastname":"Reilly","nickname":"Jordan Reilly","user_nicename":"jreilly","display_name":"Jordan Reilly","user_email":"jreilly@esri.com","user_url":"","user_registered":"2025-06-09 17:42:42","user_description":"I'm a National Government Solution Engineer at Esri, primarily supporting the US Intelligence Community. I graduated with a B.S. in Human Geography from the US Military Academy at West Point and an M.S. in GIS from Johns Hopkins University. At work, I love mixing the science of spatial analysis with the art of cartography, and outside of work, you'll likely find me with a book, my headphones, an iced coffee, and one or more of my pets within petting distance.","user_avatar":"<img data-del=\"avatar\" src='https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/fjords2-213x200.jpg' class='avatar pp-user-avatar avatar-96 photo ' height='96' width='96'\/>"},{"ID":312742,"user_firstname":"Julia","user_lastname":"Smyth","nickname":"Julia Smyth","user_nicename":"julia-smyth","display_name":"Julia Smyth","user_email":"jsmyth@esri.com","user_url":"","user_registered":"2022-06-13 18:30:41","user_description":"Julia is a Product Marketing Manager on the Operational Intelligence team at Esri, primarily working with ArcGIS Mission and ArcGIS AllSource.","user_avatar":"<img data-del=\"avatar\" src='https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2022\/10\/Unknown-5-213x200.jpeg' class='avatar pp-user-avatar avatar-96 photo ' height='96' width='96'\/>"}],"related_articles":"","short_description":"In this blog, we\u2019re going to be cooking up a multi-INT analysis centered around drug trafficking activities in Peru.  ","flexible_content":[{"acf_fc_layout":"content","content":"<p class=\"p1\">In this blog, we\u2019re going to be cooking up a multi-INT analysis centered around drug trafficking activities in Peru.<\/p>\n<p class=\"p1\">While sometimes we might think of \u201cIntel Analysts\u201d as unique to the Defense and Intelligence or Public Safety industries, the truth is that they aren&#8217;t. If you gather, analyze, and interpret data to drive better decision-making in your organization\u2014you\u2019re doing intelligence analysis. So even if your job title doesn\u2019t include \u201cIntel Analyst,\u201d there\u2019s a good chance &#8220;intelligence analysis\u201d is relevant to what you do every day.<\/p>\n<p class=\"p1\">This happens to be a very National Security-related problem set\u2014which puts it squarely in that Defense\/Intelligence\/Public Safety industry realm\u2014but just like any recipe, the steps and tools used here can be applied to the flavor of industry that you work in.<\/p>\n<p class=\"p1\">For readers who attended the Esri FedGIS 2025 Plenary session, you\u2019ve sampled this multi-INT analysis dish before, as a part of the <a href=\"https:\/\/mediaspace.esri.com\/media\/t\/1_fzpbiwsg\"><span class=\"s1\">Supporting National Security Spatial Workflows<\/span><\/a> presentation.<\/p>\n"},{"acf_fc_layout":"kaltura","video_id":"1_njci7c4w","time":false,"start":0,"stop":""},{"acf_fc_layout":"content","content":"<p class=\"p1\">Now that you\u2019ve seen the story, let&#8217;s take a closer look behind the scenes with some tips and tricks to spice things up.<\/p>\n<h3 class=\"p1\"><b>INGREDIENTS<\/b><\/h3>\n<p class=\"p1\">The data and tools we\u2019re going to use were sourced from the <a href=\"https:\/\/www.esri.com\/en-us\/about\/partners\/overview\"><span class=\"s1\">Esri Partner Network<\/span><\/a> (EPN) and the ArcGIS System. The three primary datasets for the analysis come from Janes, Maxar, and Spire, who are data provider partners in the EPN.<\/p>\n<ul class=\"ul1\">\n<li class=\"li1\"><b>Open-source intelligence data from <\/b><a href=\"https:\/\/www.janes.com\/\"><span class=\"s1\"><b>Janes<\/b><\/span><\/a><\/li>\n<\/ul>\n<p class=\"p1\">Janes is a trusted source of information relevant to government, military, and industry customers. Janes collects analysis and open-source information for defense equipment, organization, capability, and market intelligence, providing timely and accurate foundational, current, and strategic military and national security information. We\u2019re going to be using their Events data for our analysis.<\/p>\n<ul class=\"ul1\">\n<li class=\"li1\"><b>Satellite imagery from <\/b><a href=\"https:\/\/www.maxar.com\/\"><span class=\"s1\"><b>Maxar<\/b><\/span><\/a><\/li>\n<\/ul>\n<p class=\"p1\">Maxar is a space technology and intelligence company. Maxar provides comprehensive space solutions and secure, precise geospatial intelligence to help governments and businesses solve problems. For this workflow, we\u2019re going to leverage their high-resolution optical satellite imagery.<\/p>\n<ul class=\"ul1\">\n<li class=\"li1\"><b>AIS (Automatic Identification System) data from <\/b><a href=\"https:\/\/spire.com\/\"><span class=\"s1\"><b>Spire<\/b><\/span><\/a><\/li>\n<\/ul>\n<p class=\"p1\">Spire is a data and analytics company that collects data from space with its global constellation of RF listening satellites to solve problems. Spire identifies, tracks, and predicts the movement of the world\u2019s maritime vessels, aircraft, and weather systems. This particular analysis calls for their AIS ship tracking data. <i>Spire Maritime has since been acquired by <\/i><a href=\"https:\/\/www.kpler.com\/\"><span class=\"s1\"><i>Kpler<\/i><\/span><\/a><i>.<\/i><\/p>\n<ul class=\"ul1\">\n<li class=\"li1\"><b>Boundary data from <\/b><a href=\"https:\/\/livingatlas.arcgis.com\/en\/home\/\"><span class=\"s1\"><b>ArcGIS Living Atlas of the World<\/b><\/span><\/a><\/li>\n<\/ul>\n<p class=\"p1\">ArcGIS Living Atlas of the World is a curated, authoritative collection of geographic information from Esri, Esri Partners, and the global GIS user community. It includes ready-to-use maps, apps, layers, and deep learning packages that you can incorporate into your own projects and workflows. We\u2019re going to be using <a href=\"https:\/\/www.arcgis.com\/home\/item.html?id=ac80670eb213440ea5899bbf92a04998\"><span class=\"s1\">World Countries<\/span><\/a>, <a href=\"https:\/\/www.arcgis.com\/home\/item.html?id=56633b40c1744109a265af1dba673535\"><span class=\"s1\">World Administrative Divisions<\/span><\/a>, <a href=\"https:\/\/www.arcgis.com\/home\/item.html?id=9c707fa7131b4462a08b8bf2e06bf4ad\"><span class=\"s1\">World Exclusive Economic Zones<\/span><\/a>, and the <a href=\"https:\/\/www.arcgis.com\/home\/item.html?id=841600854d934d7d8a1656eee32d5847\"><span class=\"s1\">Amazon Ecoregion<\/span><\/a> to provide context for our analysis.<\/p>\n<ul class=\"ul1\">\n<li class=\"li1\"><span class=\"s2\"><a href=\"https:\/\/www.esri.com\/en-us\/arcgis\/products\/arcgis-allsource\/overview\"><span class=\"s3\"><b>ArcGIS AllSource<\/b><\/span><\/a><\/span><b> from Esri<\/b><\/li>\n<\/ul>\n<p class=\"p1\">Esri\u2019s desktop software that\u2019s designed specifically for intelligence professionals across the public and private sectors. It is structured to streamline intelligence workflows and help you extract insights from information to make more timely and informed decisions.<\/p>\n<h3 class=\"p1\"><b>INSTRUCTIONS\u00a0<\/b><\/h3>\n<ol class=\"ol1\">\n<li class=\"li1\"><b>Prep ingredients: <\/b>Ingest data from all types of intelligence sources.<\/li>\n<li class=\"li1\"><b>Temporal analysis: <\/b>Plot time-enabled data in sequence on a timeline.<\/li>\n<li class=\"li1\"><b>Imagery analysis: <\/b>Extract insights from imagery by combining GeoAI and foundational GIS geoprocessing tools in a custom ModelBuilder tool.<\/li>\n<li class=\"li1\"><b>Movement analysis: <\/b>Analyze point track data to identify patterns and infer relationships based on space-time proximity with dedicated geoprocessing tools.<\/li>\n<li class=\"li1\"><b>Link analysis: <\/b>Evaluate the most influential nodes (entities) in a network structure based on their relationships (links) using native link analysis tools.<\/li>\n<li class=\"li1\"><b>Serve and share:<\/b> Disseminate intelligence products throughout the organization.<\/li>\n<\/ol>\n<p>&nbsp;<\/p>\n<p class=\"p1\"><b>STEP 1: Prep Ingredients\u00a0<\/b><\/p>\n<p class=\"p1\">ArcGIS AllSource is able to synthesize information from all different types of intelligence sources, in all different formats, so we brought in the open-source (Janes), geospatial imagery (Maxar), and signals (Spire) data provided by our data provider partners. These datasets are all relevant for monitoring and combatting various aspects of drug trafficking in Peru and in SOUTHCOM at large.<\/p>\n"},{"acf_fc_layout":"image","image":{"ID":2825292,"id":2825292,"title":"AnalyzeDiverseTypesOfData","filename":"AnalyzeDiverseTypesOfData.png","filesize":958802,"url":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/AnalyzeDiverseTypesOfData.png","link":"https:\/\/www.esri.com\/arcgis-blog\/products\/allsource\/defense\/peruvian-intelligence-fusion-a-recipe-for-multi-int-analysis-in-arcgis-allsource\/analyzediversetypesofdata","alt":"A map of Peru and the surrounding ocean, showing intelligence data sources including ship tracks, event locations, and clandestine airstrips. A \"Contents\" panel on the left allows users to toggle different data layers on or off.","author":"312742","description":"","caption":"Analyze diverse types of data in one desktop application","name":"analyzediversetypesofdata","status":"inherit","uploaded_to":2822032,"date":"2025-06-09 17:43:59","modified":"2025-06-09 17:45:33","menu_order":0,"mime_type":"image\/png","type":"image","subtype":"png","icon":"https:\/\/www.esri.com\/arcgis-blog\/wp-includes\/images\/media\/default.png","width":1028,"height":576,"sizes":{"thumbnail":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/AnalyzeDiverseTypesOfData-213x200.png","thumbnail-width":213,"thumbnail-height":200,"medium":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/AnalyzeDiverseTypesOfData.png","medium-width":464,"medium-height":261,"medium_large":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/AnalyzeDiverseTypesOfData.png","medium_large-width":768,"medium_large-height":430,"large":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/AnalyzeDiverseTypesOfData.png","large-width":1028,"large-height":576,"1536x1536":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/AnalyzeDiverseTypesOfData.png","1536x1536-width":1028,"1536x1536-height":576,"2048x2048":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/AnalyzeDiverseTypesOfData.png","2048x2048-width":1028,"2048x2048-height":576,"card_image":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/AnalyzeDiverseTypesOfData-826x463.png","card_image-width":826,"card_image-height":463,"wide_image":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/AnalyzeDiverseTypesOfData.png","wide_image-width":1028,"wide_image-height":576}},"image_position":"center","orientation":"horizontal","hyperlink":""},{"acf_fc_layout":"content","content":"<p class=\"p1\"><b>STEP 2: Temporal Analysis<\/b><\/p>\n<p class=\"p1\">We kicked off our analysis with the open-source intelligence event data from Janes. <a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/visualization\/what-is-a-timeline.htm\"><span class=\"s1\">Timelines<\/span><\/a> were developed specifically for ArcGIS AllSource to plot time-enabled data based on a single timestamp or on a timespan range. The events dataset has a time field for each event, so we can visualize the data along a timeline\u2019s temporal axis. To more clearly see where in time different types of events (Serious &amp; Organized Crime, Terrorism &amp; Insurgency, Government &amp; Political, Protests &amp; Riots, and Military) fell, we set the \u201cCategory\u201d attribute field as the Timeline Layer category field in the <a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/visualization\/manage-timelines.htm#ESRI_SECTION1_F6078D4E33944CD5A97AF12500E8CF34\"><span class=\"s1\">Timeline Layer Properties<\/span><\/a>. That way, when we expanded the timeline with the <a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/visualization\/explore-data-in-timeline.htm\"><span class=\"s1\">Enable Lanes<\/span><\/a> command, it separated our data by the event type.<\/p>\n"},{"acf_fc_layout":"image","image":{"ID":2825392,"id":2825392,"title":"Timelines_SingleLayer","filename":"Timelines_SingleLayer.gif","filesize":9651940,"url":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Timelines_SingleLayer.gif","link":"https:\/\/www.esri.com\/arcgis-blog\/products\/allsource\/defense\/peruvian-intelligence-fusion-a-recipe-for-multi-int-analysis-in-arcgis-allsource\/timelines_singlelayer","alt":"A map of Peru and the surrounding ocean, showing intelligence data sources including ship tracks, event locations, and clandestine airstrips. A \"Contents\" panel on the left allows users to toggle different data layers on or off.","author":"312742","description":"","caption":"Explore temporal patterns by creating a timeline of your data\u00a0","name":"timelines_singlelayer","status":"inherit","uploaded_to":2822032,"date":"2025-06-09 17:57:49","modified":"2025-06-09 17:59:03","menu_order":0,"mime_type":"image\/gif","type":"image","subtype":"gif","icon":"https:\/\/www.esri.com\/arcgis-blog\/wp-includes\/images\/media\/default.png","width":1920,"height":1080,"sizes":{"thumbnail":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Timelines_SingleLayer-213x200.gif","thumbnail-width":213,"thumbnail-height":200,"medium":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Timelines_SingleLayer.gif","medium-width":464,"medium-height":261,"medium_large":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Timelines_SingleLayer.gif","medium_large-width":768,"medium_large-height":432,"large":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Timelines_SingleLayer.gif","large-width":1920,"large-height":1080,"1536x1536":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Timelines_SingleLayer-1536x864.gif","1536x1536-width":1536,"1536x1536-height":864,"2048x2048":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Timelines_SingleLayer.gif","2048x2048-width":1920,"2048x2048-height":1080,"card_image":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Timelines_SingleLayer-826x465.gif","card_image-width":826,"card_image-height":465,"wide_image":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Timelines_SingleLayer.gif","wide_image-width":1920,"wide_image-height":1080}},"image_position":"center","orientation":"horizontal","hyperlink":""},{"acf_fc_layout":"content","content":"<p class=\"p1\">Timelines link to the map\u2019s spatial extent, which makes it easy to focus on events happening in a specific area. Drug traffickers have been known to operate in the Peruvian Amazon, particularly in the area between the Ucayali River and the Andes Mountains, where they grow coca plants and process cocaine. By combining temporal and spatial attributes, we isolated 23 events in that area of interest to focus our attention on\u2014down from the original 2,100 events across Peru. The most recent stands out after a two-month quiet period: the seizure of cocaine and other precursors from a drug laboratory in the region.<\/p>\n<p class=\"p1\"><i>Tip: If your dataset has fields for both a start and end date, you can visualize the full timespan for each feature by adjusting the <\/i><a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/visualization\/set-the-time-properties-on-data.htm\"><span class=\"s1\"><i>Time settings in the Layer Properties<\/i><\/span><\/a><i> to \u201cEach feature has start and end time fields\u201d before you add the layer to a timeline.<\/i><\/p>\n<p class=\"p1\">It&#8217;s possible to add more than one layer from the same map to a timeline, which lets us compare multiple aspects of data along the same temporal axis. Features on a timeline honor their map symbology, so adding the time-enabled Maxar Imagery Collections layer to our existing timeline lets us easily visualize when satellite imagery collections were completed relative to the drug lab seizure. If we\u2019re interested in imagery collected before\u2014or maybe after\u2014a specific event, a timeline is a quick way to compare temporal datasets.<\/p>\n"},{"acf_fc_layout":"image","image":{"ID":2825422,"id":2825422,"title":"Timelines_MultipleLayers","filename":"Timelines_MultipleLayers.gif","filesize":6170851,"url":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Timelines_MultipleLayers.gif","link":"https:\/\/www.esri.com\/arcgis-blog\/products\/allsource\/defense\/peruvian-intelligence-fusion-a-recipe-for-multi-int-analysis-in-arcgis-allsource\/timelines_multiplelayers","alt":"A map of the Amazon Ecoregion in the ArcGIS Intelligence portal is displayed. Points of interest are labeled, including a \"Drug Laboratory Seizure.\" A contextual menu is open, showing labeling options.","author":"312742","description":"","caption":"Add multiple layers from a single map to find patterns across datasets ","name":"timelines_multiplelayers","status":"inherit","uploaded_to":2822032,"date":"2025-06-09 18:00:17","modified":"2025-06-09 18:01:41","menu_order":0,"mime_type":"image\/gif","type":"image","subtype":"gif","icon":"https:\/\/www.esri.com\/arcgis-blog\/wp-includes\/images\/media\/default.png","width":1920,"height":1080,"sizes":{"thumbnail":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Timelines_MultipleLayers-213x200.gif","thumbnail-width":213,"thumbnail-height":200,"medium":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Timelines_MultipleLayers.gif","medium-width":464,"medium-height":261,"medium_large":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Timelines_MultipleLayers.gif","medium_large-width":768,"medium_large-height":432,"large":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Timelines_MultipleLayers.gif","large-width":1920,"large-height":1080,"1536x1536":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Timelines_MultipleLayers-1536x864.gif","1536x1536-width":1536,"1536x1536-height":864,"2048x2048":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Timelines_MultipleLayers.gif","2048x2048-width":1920,"2048x2048-height":1080,"card_image":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Timelines_MultipleLayers-826x465.gif","card_image-width":826,"card_image-height":465,"wide_image":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Timelines_MultipleLayers.gif","wide_image-width":1920,"wide_image-height":1080}},"image_position":"center","orientation":"horizontal","hyperlink":""},{"acf_fc_layout":"content","content":"<p class=\"p1\"><b>STEP 3: Imagery Analysis<\/b><\/p>\n<p class=\"p1\">Drug traffickers will cut illegal airstrips into the Amazon rainforest to move processed cocaine out of Peru. Several of these airstrips have been previously found and destroyed roughly 35 miles north of the drug laboratory seizure; if traffickers have used this area in the past, it\u2019s possible that they\u2019ll use it again in the future.<\/p>\n"},{"acf_fc_layout":"image","image":{"ID":2825442,"id":2825442,"title":"BufferAFeature","filename":"BufferAFeature.png","filesize":1104994,"url":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/BufferAFeature.png","link":"https:\/\/www.esri.com\/arcgis-blog\/products\/allsource\/defense\/peruvian-intelligence-fusion-a-recipe-for-multi-int-analysis-in-arcgis-allsource\/bufferafeature","alt":"A map of the Amazon Ecoregion in the ArcGIS Intelligence interface is displayed. Points of interest are labeled, including a \"Drug Laboratory Seizure.\" A contextual menu is open, showing labeling options.","author":"312742","description":"","caption":"Buffer a feature of interest to help visualize spatial patterns in your data","name":"bufferafeature","status":"inherit","uploaded_to":2822032,"date":"2025-06-09 18:05:40","modified":"2025-06-09 18:06:19","menu_order":0,"mime_type":"image\/png","type":"image","subtype":"png","icon":"https:\/\/www.esri.com\/arcgis-blog\/wp-includes\/images\/media\/default.png","width":1029,"height":564,"sizes":{"thumbnail":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/BufferAFeature-213x200.png","thumbnail-width":213,"thumbnail-height":200,"medium":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/BufferAFeature.png","medium-width":464,"medium-height":254,"medium_large":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/BufferAFeature.png","medium_large-width":768,"medium_large-height":421,"large":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/BufferAFeature.png","large-width":1029,"large-height":564,"1536x1536":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/BufferAFeature.png","1536x1536-width":1029,"1536x1536-height":564,"2048x2048":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/BufferAFeature.png","2048x2048-width":1029,"2048x2048-height":564,"card_image":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/BufferAFeature-826x453.png","card_image-width":826,"card_image-height":453,"wide_image":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/BufferAFeature.png","wide_image-width":1029,"wide_image-height":564}},"image_position":"center","orientation":"horizontal","hyperlink":"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/analysis\/geoprocessing-tools\/analysis\/buffer.htm"},{"acf_fc_layout":"content","content":"<p class=\"p1\">Monitoring the rainforest for any new airstrips requires processing imagery quickly and at scale over a large area. We combined newer <a href=\"https:\/\/www.esri.com\/en-us\/capabilities\/geoai\/overview\"><span class=\"s1\">GeoAI<\/span><\/a> tools with more traditional GIS tools to automate an imagery exploitation workflow. The Maxar satellite imagery collections gave us a high-resolution, bird\u2019s eye view of the Amazon that we used as the foundation for discovering possible airstrips.<\/p>\n"},{"acf_fc_layout":"image","image":{"ID":2825452,"id":2825452,"title":"IngestAndViewImagery","filename":"IngestAndViewImagery.png","filesize":1319037,"url":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/IngestAndViewImagery.png","link":"https:\/\/www.esri.com\/arcgis-blog\/products\/allsource\/defense\/peruvian-intelligence-fusion-a-recipe-for-multi-int-analysis-in-arcgis-allsource\/ingestandviewimagery","alt":"A map of the Amazon Ecoregion in the ArcGIS Intelligence interface is displayed. Points of interest are labeled, including a \"Drug Laboratory Seizure.\" A contextual menu is open, showing labeling options.","author":"312742","description":"","caption":"Seamlessly ingest and view imagery from a variety of supported sensors and formats \n\n ","name":"ingestandviewimagery","status":"inherit","uploaded_to":2822032,"date":"2025-06-09 18:07:28","modified":"2025-06-09 18:08:09","menu_order":0,"mime_type":"image\/png","type":"image","subtype":"png","icon":"https:\/\/www.esri.com\/arcgis-blog\/wp-includes\/images\/media\/default.png","width":1029,"height":564,"sizes":{"thumbnail":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/IngestAndViewImagery-213x200.png","thumbnail-width":213,"thumbnail-height":200,"medium":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/IngestAndViewImagery.png","medium-width":464,"medium-height":254,"medium_large":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/IngestAndViewImagery.png","medium_large-width":768,"medium_large-height":421,"large":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/IngestAndViewImagery.png","large-width":1029,"large-height":564,"1536x1536":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/IngestAndViewImagery.png","1536x1536-width":1029,"1536x1536-height":564,"2048x2048":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/IngestAndViewImagery.png","2048x2048-width":1029,"2048x2048-height":564,"card_image":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/IngestAndViewImagery-826x453.png","card_image-width":826,"card_image-height":453,"wide_image":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/IngestAndViewImagery.png","wide_image-width":1029,"wide_image-height":564}},"image_position":"center","orientation":"horizontal","hyperlink":"https:\/\/doc.arcgis.com\/en\/allsource\/1.1\/data\/list-of-supported-sensors.htm"},{"acf_fc_layout":"content","content":"<p class=\"p1\">In the <a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/analysis\/geoprocessing-tools\/image-analyst\/an-overview-of-the-deep-learning-toolset-in-image-analyst.htm\"><span class=\"s1\">Deep Learning<\/span><\/a> toolset of the <a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/analysis\/geoprocessing-tools\/image-analyst\/an-overview-of-the-image-analyst-toolbox.htm\"><span class=\"s1\">Image Analyst<\/span><\/a> toolbox, there&#8217;s a <a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/analysis\/geoprocessing-tools\/image-analyst\/classify-pixels-using-deep-learning.htm\"><span class=\"s1\">Classify Pixels Using Deep Learning<\/span><\/a> tool which runs a trained deep learning model on an input raster to produce a classified raster.<\/p>\n<p class=\"p1\"><i>Tip: If you don&#8217;t have access to either a pretrained model that detects for a specific object or to enough imagery to fine tune an existing model or fully train a new model, it may be possible to repurpose an existing pretrained model, particularly if the objects you want to detect have specific characteristics you can use to narrow down your base outputs. You can also look at using a general-purpose foundation model, like <\/i><a href=\"https:\/\/www.arcgis.com\/home\/item.html?id=8df3bf4167bc4c7b967f677f8b362ec3\"><span class=\"s1\"><i>Text SAM<\/i><\/span><\/a><i>, <\/i><a href=\"https:\/\/www.arcgis.com\/home\/item.html?id=e60d974556fa45db95f5bf73caf2421a\"><span class=\"s1\"><i>GroundingDINO<\/i><\/span><\/a><i>, or <\/i><a href=\"https:\/\/www.arcgis.com\/home\/item.html?id=db4ccd9a286a471d8b937f79d88e96a3\"><span class=\"s1\"><i>Prompt Based Segmentation<\/i><\/span><\/a><i>.<\/i><\/p>\n<p class=\"p1\">For our workflow, we started with the pretrained <a href=\"https:\/\/www.arcgis.com\/home\/item.html?id=a10f46a8071a4318bcc085dae26d7ee4\"><span class=\"s1\">High Resolution Land Cover Classification &#8211; USA<\/span><\/a> deep learning model, available through <a href=\"https:\/\/livingatlas.arcgis.com\/en\/browse\/#d=2&amp;type=tool&amp;itemTypes=Deep+Learning+Package\"><span class=\"s1\">ArcGIS Living Atlas of the World<\/span><\/a>. This model uses 8-bit, 3-band, high-resolution imagery as the input raster and creates an output raster of pixels classified into 9 land cover classes: water, wetlands, tree canopy, shrubland, low vegetation, barren, structures, impervious surfaces, and impervious roads.<\/p>\n<p class=\"p1\"><i>Tip: When preparing for deep learning, you may find that your imagery doesn\u2019t match the bit depth or the band count of the imagery that the model was trained for, which could mean less accurate outputs. To adjust the bit depth of your image, try the <\/i><a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/analysis\/geoprocessing-tools\/data-management\/copy-raster.htm\"><span class=\"s1\"><i>Copy Raster<\/i><\/span><\/a><i> tool in the <\/i><a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/analysis\/geoprocessing-tools\/data-management\/an-overview-of-the-data-management-toolbox.htm\"><span class=\"s1\"><i>Data Management<\/i><\/span><\/a><i> toolbox. To limit the number of bands in your image, try the <\/i><a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/analysis\/raster-functions\/extract-bands-function.htm\"><span class=\"s1\"><i>Extract Bands<\/i><\/span><\/a><i> or <\/i><a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/analysis\/raster-functions\/subset-bands-function.htm\"><span class=\"s1\"><i>Subset Bands<\/i><\/span><\/a><i> functions in the <\/i><a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/analysis\/raster-functions\/raster-functions-pane.htm\"><span class=\"s1\"><i>Raster Functions<\/i><\/span><\/a><i> pane.<\/i><\/p>\n"},{"acf_fc_layout":"image","image":{"ID":2825472,"id":2825472,"title":"GeoAI_LandCover","filename":"GeoAI_LandCover.gif","filesize":7078018,"url":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/GeoAI_LandCover.gif","link":"https:\/\/www.esri.com\/arcgis-blog\/products\/allsource\/defense\/peruvian-intelligence-fusion-a-recipe-for-multi-int-analysis-in-arcgis-allsource\/geoai_landcover","alt":"ArcGIS Intelligence Portal displaying a raster layer of Peru with land cover classification achieved through deep learning and its associated geoprocessing settings.","author":"312742","description":"","caption":"Run deep learning inferencing in ArcGIS using your own or a pretrained model from the Living Atlas ","name":"geoai_landcover","status":"inherit","uploaded_to":2822032,"date":"2025-06-09 18:13:19","modified":"2025-06-09 18:13:42","menu_order":0,"mime_type":"image\/gif","type":"image","subtype":"gif","icon":"https:\/\/www.esri.com\/arcgis-blog\/wp-includes\/images\/media\/default.png","width":1920,"height":1080,"sizes":{"thumbnail":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/GeoAI_LandCover-213x200.gif","thumbnail-width":213,"thumbnail-height":200,"medium":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/GeoAI_LandCover.gif","medium-width":464,"medium-height":261,"medium_large":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/GeoAI_LandCover.gif","medium_large-width":768,"medium_large-height":432,"large":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/GeoAI_LandCover.gif","large-width":1920,"large-height":1080,"1536x1536":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/GeoAI_LandCover-1536x864.gif","1536x1536-width":1536,"1536x1536-height":864,"2048x2048":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/GeoAI_LandCover.gif","2048x2048-width":1920,"2048x2048-height":1080,"card_image":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/GeoAI_LandCover-826x465.gif","card_image-width":826,"card_image-height":465,"wide_image":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/GeoAI_LandCover.gif","wide_image-width":1920,"wide_image-height":1080}},"image_position":"center","orientation":"horizontal","hyperlink":""},{"acf_fc_layout":"content","content":"<p class=\"p1\">While none of these classes in and of themselves will specifically pick out clandestine airstrips from our imagery, the benefit of working with AI outputs in a GIS is that we can combine them with additional geoprocessing tools to refine the results.<\/p>\n"},{"acf_fc_layout":"image","image":{"ID":2825482,"id":2825482,"title":"CustomGeoprocessingModels","filename":"CustomGeoprocessingModels.png","filesize":165853,"url":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/CustomGeoprocessingModels.png","link":"https:\/\/www.esri.com\/arcgis-blog\/products\/allsource\/defense\/peruvian-intelligence-fusion-a-recipe-for-multi-int-analysis-in-arcgis-allsource\/customgeoprocessingmodels","alt":"A model titled \"Find Possible Airstrips\" is built using GIS software. It demonstrates a workflow that includes raster, polygon, attribute selections, calculations, and spatial analysis.","author":"312742","description":"","caption":"Create, edit, and manage custom geoprocessing models with ModelBuilder, ArcGIS\u2019s visual programming language with a drag-and-drop approach ","name":"customgeoprocessingmodels","status":"inherit","uploaded_to":2822032,"date":"2025-06-09 18:14:33","modified":"2025-06-09 18:21:46","menu_order":0,"mime_type":"image\/png","type":"image","subtype":"png","icon":"https:\/\/www.esri.com\/arcgis-blog\/wp-includes\/images\/media\/default.png","width":1280,"height":720,"sizes":{"thumbnail":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/CustomGeoprocessingModels-213x200.png","thumbnail-width":213,"thumbnail-height":200,"medium":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/CustomGeoprocessingModels.png","medium-width":464,"medium-height":261,"medium_large":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/CustomGeoprocessingModels.png","medium_large-width":768,"medium_large-height":432,"large":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/CustomGeoprocessingModels.png","large-width":1280,"large-height":720,"1536x1536":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/CustomGeoprocessingModels.png","1536x1536-width":1280,"1536x1536-height":720,"2048x2048":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/CustomGeoprocessingModels.png","2048x2048-width":1280,"2048x2048-height":720,"card_image":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/CustomGeoprocessingModels-826x465.png","card_image-width":826,"card_image-height":465,"wide_image":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/CustomGeoprocessingModels.png","wide_image-width":1280,"wide_image-height":720}},"image_position":"center","orientation":"horizontal","hyperlink":""},{"acf_fc_layout":"content","content":"<p class=\"p1\">The <a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/analysis\/geoprocessing\/what-is-modelbuilder-.htm\"><span class=\"s1\">ModelBuilder<\/span><\/a> tool consists of five common geoprocessing tasks linked together in a custom geoprocessing model. The first step for the model is to <a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/analysis\/geoprocessing-tools\/conversion\/raster-to-polygon.htm\"><span class=\"s1\">convert the GeoAI output raster to a polygon<\/span><\/a> based on the land cover \u201cClass\u201d field. For drug traffickers to use land as an airstrip, they need to clear out the rainforest vegetation, so the second step <a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/analysis\/geoprocessing-tools\/data-management\/select-layer-by-attribute.htm\"><span class=\"s1\">selects<\/span><\/a> all the features that were classified as \u201cLow Vegetation\u201d by the deep learning model. Once the low vegetation areas are selected (~1.5k polygons in total), the model <a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/analysis\/geoprocessing-tools\/data-management\/minimum-bounding-geometry.htm\"><span class=\"s1\">creates a minimum bounding rectangle<\/span><\/a> for each area and <a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/analysis\/geoprocessing-tools\/data-management\/calculate-field.htm\"><span class=\"s1\">calculates<\/span><\/a> the ratio between the rectangle\u2019s width and the length. To narrow down areas that meet the requirements for an airstrip, the model <a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/analysis\/geoprocessing-tools\/data-management\/select-layer-by-attribute.htm\"><span class=\"s1\">selects<\/span><\/a> all minimum bounding rectangles where the ratio is less than or equal to 0.1 (i.e. areas that are very long and skinny) and the longest side is at least 650m (i.e. areas that are long enough for a plane to take off or land) and <a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/analysis\/geoprocessing-tools\/conversion\/export-features.htm\"><span class=\"s1\">exports<\/span><\/a> them to a new feature class for an analyst to review and confirm the presence of an illegal airstrip.<\/p>\n"},{"acf_fc_layout":"image","image":{"ID":2836602,"id":2836602,"title":"geoAI-ezgif.com-optimize","filename":"geoAI-ezgif.com-optimize.gif","filesize":8921978,"url":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/geoAI-ezgif.com-optimize.gif","link":"https:\/\/www.esri.com\/arcgis-blog\/products\/allsource\/defense\/peruvian-intelligence-fusion-a-recipe-for-multi-int-analysis-in-arcgis-allsource\/geoai-ezgif-com-optimize","alt":"","author":"312742","description":"","caption":"Run a ModelBuilder model in the ModelBuilder UI or as a geoprocessing tool in the Geoprocessing pane","name":"geoai-ezgif-com-optimize","status":"inherit","uploaded_to":2822032,"date":"2025-06-16 17:53:17","modified":"2025-06-16 17:55:26","menu_order":0,"mime_type":"image\/gif","type":"image","subtype":"gif","icon":"https:\/\/www.esri.com\/arcgis-blog\/wp-includes\/images\/media\/default.png","width":1811,"height":1018,"sizes":{"thumbnail":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/geoAI-ezgif.com-optimize-213x200.gif","thumbnail-width":213,"thumbnail-height":200,"medium":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/geoAI-ezgif.com-optimize.gif","medium-width":464,"medium-height":261,"medium_large":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/geoAI-ezgif.com-optimize.gif","medium_large-width":768,"medium_large-height":432,"large":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/geoAI-ezgif.com-optimize.gif","large-width":1811,"large-height":1018,"1536x1536":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/geoAI-ezgif.com-optimize-1536x863.gif","1536x1536-width":1536,"1536x1536-height":863,"2048x2048":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/geoAI-ezgif.com-optimize.gif","2048x2048-width":1811,"2048x2048-height":1018,"card_image":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/geoAI-ezgif.com-optimize-826x465.gif","card_image-width":826,"card_image-height":465,"wide_image":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/geoAI-ezgif.com-optimize.gif","wide_image-width":1811,"wide_image-height":1018}},"image_position":"center","orientation":"horizontal","hyperlink":""},{"acf_fc_layout":"content","content":"<p class=\"p1\"><i>Tip: You can create models based on completed, successful tool runs by adding them to ModelBuilder from your <\/i><a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/analysis\/geoprocessing\/geoprocessing-history.htm\"><span class=\"s1\"><i>Geoprocessing History<\/i><\/span><\/a><i> pane (right click + Add to Model). You can then use the Find and Replace functionality in the <\/i><a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/analysis\/geoprocessing\/model-report.htm\"><span class=\"s1\"><i>ModelBuilder Report<\/i><\/span><\/a><i> to adjust or rename the parameters and tools if you want to generalize your model for reuse<\/i><span class=\"s2\"><i>.<\/i><\/span><\/p>\n<p class=\"p1\"><b>STEP 4: Movement Analysis<\/b><\/p>\n<p class=\"p1\">Peru is also fighting drug trafficking at several of its ports on the Amazon River and along its Pacific coast. Movement data, like Spire AIS ship tracks, could contain valuable insights about known or suspected bad actors in the maritime realm; real-time vessel data can be used to monitor sanctioned vessels and historical data can be <a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/analysis\/geoprocessing-tools\/geoanalytics-desktop\/summarize-within.htm\"><span class=\"s1\">summarized<\/span><\/a> to expose common shipping routes in large amounts of data (the ship tracks feature class includes almost 1M features).<\/p>\n"},{"acf_fc_layout":"image","image":{"ID":2826132,"id":2826132,"title":"Movement_Summarized-ezgif.com-optimize","filename":"Movement_Summarized-ezgif.com-optimize.gif","filesize":6137009,"url":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Movement_Summarized-ezgif.com-optimize.gif","link":"https:\/\/www.esri.com\/arcgis-blog\/products\/allsource\/defense\/peruvian-intelligence-fusion-a-recipe-for-multi-int-analysis-in-arcgis-allsource\/movement_summarized-ezgif-com-optimize","alt":"ArcGIS Intelligence interface displaying ship tracks and areas of interest superimposed on a map of Peru and its adjacent waters.","author":"312742","description":"","caption":"Aggregate point data for visual analysis ","name":"movement_summarized-ezgif-com-optimize","status":"inherit","uploaded_to":2822032,"date":"2025-06-09 22:14:49","modified":"2025-06-09 22:19:17","menu_order":0,"mime_type":"image\/gif","type":"image","subtype":"gif","icon":"https:\/\/www.esri.com\/arcgis-blog\/wp-includes\/images\/media\/default.png","width":1920,"height":1080,"sizes":{"thumbnail":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Movement_Summarized-ezgif.com-optimize-213x200.gif","thumbnail-width":213,"thumbnail-height":200,"medium":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Movement_Summarized-ezgif.com-optimize.gif","medium-width":464,"medium-height":261,"medium_large":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Movement_Summarized-ezgif.com-optimize.gif","medium_large-width":768,"medium_large-height":432,"large":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Movement_Summarized-ezgif.com-optimize.gif","large-width":1920,"large-height":1080,"1536x1536":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Movement_Summarized-ezgif.com-optimize-1536x864.gif","1536x1536-width":1536,"1536x1536-height":864,"2048x2048":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Movement_Summarized-ezgif.com-optimize.gif","2048x2048-width":1920,"2048x2048-height":1080,"card_image":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Movement_Summarized-ezgif.com-optimize-826x465.gif","card_image-width":826,"card_image-height":465,"wide_image":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Movement_Summarized-ezgif.com-optimize.gif","wide_image-width":1920,"wide_image-height":1080}},"image_position":"center","orientation":"horizontal","hyperlink":""},{"acf_fc_layout":"content","content":"<p class=\"p1\">To take our analysis a step further, we turned to the <a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/analysis\/geoprocessing-tools\/intelligence\/an-overview-of-the-intelligence-toolbox.htm\"><span class=\"s1\">AllSource Tools<\/span><\/a> toolbox, which targets intelligence workflows and includes a toolset dedicated to processing movement data. The <a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/analysis\/geoprocessing-tools\/intelligence\/find-frequented-locations.htm\"><span class=\"s1\">Find Frequented Locations<\/span><\/a> tool from the <a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/analysis\/geoprocessing-tools\/intelligence\/an-overview-of-the-movement-analysis-toolset.htm\"><span class=\"s1\">Movement<\/span><\/a> toolset pinpoints areas where movement tracks have loitered based on user-defined parameters. In the two-month span of vessel tracks, we found 50 locations outside of the Exclusive Economic Zone\u2014neither at an anchorage nor at a dock, areas we would expect to register as frequented locations\u2014where ships met our identified dwell parameters. Of those 50, five areas registered more than one dwell period, or more than one day where a vessel hung around in that area for more than 12 hours (our defined minimum length to qualify as a frequented location).<\/p>\n"},{"acf_fc_layout":"image","image":{"ID":2825572,"id":2825572,"title":"Movement_FrequentedLocations","filename":"Movement_FrequentedLocations.gif","filesize":7277739,"url":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Movement_FrequentedLocations.gif","link":"https:\/\/www.esri.com\/arcgis-blog\/products\/allsource\/defense\/peruvian-intelligence-fusion-a-recipe-for-multi-int-analysis-in-arcgis-allsource\/movement_frequentedlocations","alt":"The ArcGIS Intelligence Portal showcases a ship track analysis map of Peru, revealing frequent vessel locations beyond economic zones and message counts, with geoprocessing tools readily available.","author":"312742","description":"","caption":"Uncover movement patterns with ArcGIS AllSource\u2019s industry-specific toolbox and tools ","name":"movement_frequentedlocations","status":"inherit","uploaded_to":2822032,"date":"2025-06-09 18:46:30","modified":"2025-06-09 18:47:09","menu_order":0,"mime_type":"image\/gif","type":"image","subtype":"gif","icon":"https:\/\/www.esri.com\/arcgis-blog\/wp-includes\/images\/media\/default.png","width":1920,"height":1080,"sizes":{"thumbnail":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Movement_FrequentedLocations-213x200.gif","thumbnail-width":213,"thumbnail-height":200,"medium":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Movement_FrequentedLocations.gif","medium-width":464,"medium-height":261,"medium_large":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Movement_FrequentedLocations.gif","medium_large-width":768,"medium_large-height":432,"large":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Movement_FrequentedLocations.gif","large-width":1920,"large-height":1080,"1536x1536":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Movement_FrequentedLocations-1536x864.gif","1536x1536-width":1536,"1536x1536-height":864,"2048x2048":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Movement_FrequentedLocations.gif","2048x2048-width":1920,"2048x2048-height":1080,"card_image":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Movement_FrequentedLocations-826x465.gif","card_image-width":826,"card_image-height":465,"wide_image":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Movement_FrequentedLocations.gif","wide_image-width":1920,"wide_image-height":1080}},"image_position":"center","orientation":"horizontal","hyperlink":""},{"acf_fc_layout":"content","content":"<p class=\"p1\"><i>Tip: Naming your <\/i><a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/visualization\/definition-query.htm\"><span class=\"s1\"><i>definition queries<\/i><\/span><\/a><i> in the Layer Properties makes it easy and intuitive to switch back and forth between the full dataset and different query subsets in the layer&#8217;s contextual Data tab.\u00a0<\/i><\/p>\n<p class=\"p1\">Comparing different movement tool outputs to the original, raw dataset illuminates patterns of life and highlights anomalies. It can help to pinpoint areas or objects that may need monitoring in the future.<\/p>\n<p class=\"p1\"><b>STEP 5: Link Analysis<\/b><\/p>\n<p class=\"p1\">Some movement tools create outputs that include not only the features themselves, but also their relationships to each other. The <a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/analysis\/geoprocessing-tools\/intelligence\/find-cotravelers.htm\"><span class=\"s1\">Find Cotravelers<\/span><\/a> tool, also found in the Movement toolset, extracts unique identifiers that are moving together in both time and space within the dataset. Vessels that are identified as traveling with each other create a network that we can visualize with native <a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/visualization\/what-is-a-link-chart-.htm\"><span class=\"s1\">link charts<\/span><\/a> in ArcGIS AllSource.<\/p>\n<p class=\"p1\">These link charts are map-based, and we used the original ship tracks dataset and the cotraveler tool output from our map to create two types of entities (nodes) and two types of relationships (links) in our link chart: Vessels, Countries, Traveled with (between vessel and vessel), and Flagged (between vessel and country).<\/p>\n"},{"acf_fc_layout":"image","image":{"ID":2825582,"id":2825582,"title":"VisualizeDataEntitiesAndRelationships","filename":"VisualizeDataEntitiesAndRelationships.png","filesize":614779,"url":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/VisualizeDataEntitiesAndRelationships.png","link":"https:\/\/www.esri.com\/arcgis-blog\/products\/allsource\/defense\/peruvian-intelligence-fusion-a-recipe-for-multi-int-analysis-in-arcgis-allsource\/visualizedataentitiesandrelationships","alt":"A gif of a ship tracking data off the coast of Peru and a network link chart of co-travelers.","author":"312742","description":"","caption":"Visualize data entities and relationships with link charting native to ArcGIS AllSource ","name":"visualizedataentitiesandrelationships","status":"inherit","uploaded_to":2822032,"date":"2025-06-09 18:48:10","modified":"2025-06-09 18:49:02","menu_order":0,"mime_type":"image\/png","type":"image","subtype":"png","icon":"https:\/\/www.esri.com\/arcgis-blog\/wp-includes\/images\/media\/default.png","width":1280,"height":564,"sizes":{"thumbnail":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/VisualizeDataEntitiesAndRelationships-213x200.png","thumbnail-width":213,"thumbnail-height":200,"medium":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/VisualizeDataEntitiesAndRelationships.png","medium-width":464,"medium-height":204,"medium_large":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/VisualizeDataEntitiesAndRelationships.png","medium_large-width":768,"medium_large-height":338,"large":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/VisualizeDataEntitiesAndRelationships.png","large-width":1280,"large-height":564,"1536x1536":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/VisualizeDataEntitiesAndRelationships.png","1536x1536-width":1280,"1536x1536-height":564,"2048x2048":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/VisualizeDataEntitiesAndRelationships.png","2048x2048-width":1280,"2048x2048-height":564,"card_image":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/VisualizeDataEntitiesAndRelationships-826x364.png","card_image-width":826,"card_image-height":364,"wide_image":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/VisualizeDataEntitiesAndRelationships.png","wide_image-width":1280,"wide_image-height":564}},"image_position":"center","orientation":"horizontal","hyperlink":""},{"acf_fc_layout":"content","content":"<p class=\"p1\"><span class=\"s1\"><a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/analysis\/link-analysis\/analysis.htm\">Link analysis<\/a><\/span> tools provide a better understanding of how data is connected within a network. Here we focused on <a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/analysis\/link-analysis\/centrality.htm\"><span class=\"s1\">Centrality<\/span><\/a> metrics, which helped us pin down the most important or most influential nodes in our cotraveling link chart. Degree Centrality allows us to find the answer to the question \u201cwhich nodes are the largest influencers\u201d or \u201cwhich nodes are connected to the most number of other nodes\u201d while Betweenness Centrality answers \u201cwhich nodes are the connecting nodes in the network.\u201d Changing the type of centrality metric changes how <i>importance<\/i> is evaluated and provides multiple lenses for us to view the network through.<\/p>\n"},{"acf_fc_layout":"image","image":{"ID":2825612,"id":2825612,"title":"Untitled","filename":"Untitled.png","filesize":616366,"url":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Untitled.png","link":"https:\/\/www.esri.com\/arcgis-blog\/products\/allsource\/defense\/peruvian-intelligence-fusion-a-recipe-for-multi-int-analysis-in-arcgis-allsource\/untitled-38","alt":"Two network graphs displaying the results of \"Cotraveler Link Chart\" analysis. One graph shows degree centrality and the other betweenness centrality, with node labels and scores.","author":"312742","description":"","caption":"Analyze the network structure with link analysis tools","name":"untitled-38","status":"inherit","uploaded_to":2822032,"date":"2025-06-09 18:55:23","modified":"2025-06-09 18:57:38","menu_order":0,"mime_type":"image\/png","type":"image","subtype":"png","icon":"https:\/\/www.esri.com\/arcgis-blog\/wp-includes\/images\/media\/default.png","width":1436,"height":573,"sizes":{"thumbnail":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Untitled-213x200.png","thumbnail-width":213,"thumbnail-height":200,"medium":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Untitled.png","medium-width":464,"medium-height":185,"medium_large":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Untitled.png","medium_large-width":768,"medium_large-height":306,"large":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Untitled.png","large-width":1436,"large-height":573,"1536x1536":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Untitled.png","1536x1536-width":1436,"1536x1536-height":573,"2048x2048":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Untitled.png","2048x2048-width":1436,"2048x2048-height":573,"card_image":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Untitled-826x330.png","card_image-width":826,"card_image-height":330,"wide_image":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/Untitled.png","wide_image-width":1436,"wide_image-height":573}},"image_position":"center","orientation":"horizontal","hyperlink":""},{"acf_fc_layout":"content","content":"<p class=\"p1\">Illegal, unregulated, and unreported (IUU) fishing is a known problem off the coast of Peru in the Pacific Ocean, and IUU fleet vessels have been linked with drug trafficking activities in the past. The Find Cotravelers tool made spatial and temporal analysis of the ship tracks dataset possible, while link analysis centrality metrics allowed us to get a more thorough understanding of influence in the cotraveling vessels network.<\/p>\n<p class=\"p1\"><b>STEP 6: Serve and Share<\/b><\/p>\n<p class=\"p1\">We started with disconnected data from Esri partners: open-source intelligence data from Janes, geospatial imagery from Maxar, and AIS signals data from Spire. We analyzed and connected that information with ArcGIS AllSource, creating actionable intelligence to support better, more informed decision-making. With our analysis complete, the final step is to serve out our insights to our organization, and the <a href=\"https:\/\/doc.arcgis.com\/en\/allsource\/latest\/production\/disseminate-with-arcgis-all-source.htm\"><span class=\"s1\">Disseminate<\/span><\/a> tab makes that a smooth process by providing access to a variety of sharing options.<\/p>\n"},{"acf_fc_layout":"image","image":{"ID":2825622,"id":2825622,"title":"ShareOutputs","filename":"ShareOutputs.png","filesize":112683,"url":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/ShareOutputs.png","link":"https:\/\/www.esri.com\/arcgis-blog\/products\/allsource\/defense\/peruvian-intelligence-fusion-a-recipe-for-multi-int-analysis-in-arcgis-allsource\/shareoutputs","alt":"Screenshot of the ArcGIS \"Disseminate\" ribbon tab, showing export and sharing options.","author":"312742","description":"","caption":"Easily share your outputs in the format your organization needs","name":"shareoutputs","status":"inherit","uploaded_to":2822032,"date":"2025-06-09 18:58:15","modified":"2025-06-09 18:58:55","menu_order":0,"mime_type":"image\/png","type":"image","subtype":"png","icon":"https:\/\/www.esri.com\/arcgis-blog\/wp-includes\/images\/media\/default.png","width":1280,"height":193,"sizes":{"thumbnail":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/ShareOutputs-213x193.png","thumbnail-width":213,"thumbnail-height":193,"medium":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/ShareOutputs.png","medium-width":464,"medium-height":70,"medium_large":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/ShareOutputs.png","medium_large-width":768,"medium_large-height":116,"large":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/ShareOutputs.png","large-width":1280,"large-height":193,"1536x1536":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/ShareOutputs.png","1536x1536-width":1280,"1536x1536-height":193,"2048x2048":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/ShareOutputs.png","2048x2048-width":1280,"2048x2048-height":193,"card_image":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/ShareOutputs-826x125.png","card_image-width":826,"card_image-height":125,"wide_image":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2025\/06\/ShareOutputs.png","wide_image-width":1280,"wide_image-height":193}},"image_position":"center","orientation":"horizontal","hyperlink":""},{"acf_fc_layout":"content","content":"<p class=\"p1\">While this blog happened to be focused on datasets related to monitoring drug trafficking operations in Peru, the tools we explored\u2014timelines, the combination of GeoAI and GIS tools, the movement toolset, and link analysis centrality metrics\u2014are relevant to and can be applied to datasets across any industry.<\/p>\n"}],"show_article_image":false,"card_image":false,"wide_image":false},"yoast_head":"<!-- This site is optimized with the Yoast SEO Premium plugin v25.9 (Yoast SEO v25.9) - https:\/\/yoast.com\/wordpress\/plugins\/seo\/ -->\n<title>Peruvian Intelligence Fusion: A Recipe for Multi-INT Analysis in ArcGIS AllSource<\/title>\n<meta name=\"robots\" content=\"index, follow, max-snippet:-1, max-image-preview:large, max-video-preview:-1\" \/>\n<link rel=\"canonical\" href=\"https:\/\/www.esri.com\/arcgis-blog\/products\/allsource\/defense\/peruvian-intelligence-fusion-a-recipe-for-multi-int-analysis-in-arcgis-allsource\" \/>\n<meta property=\"og:locale\" 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