{"id":76721,"date":"2017-04-27T14:29:43","date_gmt":"2017-04-27T14:29:43","guid":{"rendered":"http:\/\/www.esri.com\/arcgis-blog\/products\/product\/uncategorized\/impervious-surface-mapping-using-pro-1-4-part-2-classification\/"},"modified":"2022-08-25T13:02:27","modified_gmt":"2022-08-25T20:02:27","slug":"impervious-surface-mapping-using-pro-1-4-part-2-classification","status":"publish","type":"blog","link":"https:\/\/www.esri.com\/arcgis-blog\/products\/imagery\/imagery\/impervious-surface-mapping-using-pro-1-4-part-2-classification","title":{"rendered":"Impervious Surface Mapping Using ArcGIS Pro \u2013 Part 2: Classification"},"author":5991,"featured_media":0,"parent":0,"menu_order":0,"comment_status":"closed","ping_status":"closed","template":"","format":"standard","meta":{"_acf_changed":false,"_searchwp_excluded":""},"categories":[22931,22841,22871,23051],"tags":[24981,23081,23101],"industry":[],"product":[36561],"class_list":["post-76721","blog","type-blog","status-publish","format-standard","hentry","category-imagery","category-local-government","category-state-government","category-water","tag-hydro","tag-utilities","tag-water-utilities","product-arcgis-pro"],"acf":{"short_description":"Impervious surface maps are used for important storm water management operations such as helping to identify Best Management Practices fo...","flexible_content":[{"acf_fc_layout":"content","content":"<p>Impervious surface maps are used for important storm water management operations such as helping to identify Best Management Practices for removing pollution from storm water runoff, determining storm water utility fees on a parcel basis, or flood control and emergency management planning.<\/p>\n<p>The <a title=\" Impervious Surface Mapping using Pro 1.4 \u2013 Part 1: Georeferencing\" href=\"https:\/\/blogs.esri.com\/esri\/arcgis\/2017\/02\/23\/impervious-surface-mapping-using-pro-1-4-part-1-georeferencing\/\" target=\"_blank\" rel=\"noopener\">previous blog post<\/a> about impervious surface classification discussed how to georeference your imagery in preparation for classification. Now that your imagery is properly registered to your landbase, this blog will focus on the science and art of multispectral image classification. In this case, you will perform impervious surface classification on the multispectral image. The result will be a <a href=\"https:\/\/www.esri.com\/en-us\/arcgis\/products\/imagery-remote-sensing\/capabilities\/management\">thematic raster dataset<\/a> classified into pervious and impervious surface areas.<\/p>\n<p>The first step is to display your image in a way that best discriminates your features of interest visually and analytically. For impervious surface features, you&#8217;ll want to display the imagery bands NIR (for vegetation), Red (for soil) and Blue (for urban features) as RGB.\u00a0 You can use the Symbology pane and the Appearance tab to adjust your rendering.<\/p>\n<figure id=\"attachment_78152\" aria-describedby=\"caption-attachment-78152\" style=\"width: 550px\" class=\"wp-caption aligncenter\"><img loading=\"lazy\" decoding=\"async\" class=\"size-full wp-image-78152 \" src=\"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2017\/04\/Classification_Source_Overview1.png\" alt=\"\" width=\"550\" height=\"489\" \/><figcaption id=\"caption-attachment-78152\" class=\"wp-caption-text\">Multispectral source image for classification<\/figcaption><\/figure>\n<p>The Image Classification Wizard is a guided workflow that walks you through all the steps for image classification. To start the Image Classification Wizard, highlight the georeferenced layer in the Contents pane. Click on the Imagery tab to view two options in the Image Classification group: Classification Wizard and Classification Tools. Choose the Classification Wizard so you can perform the steps in an easy to follow guide.<\/p>\n<figure id=\"attachment_78153\" aria-describedby=\"caption-attachment-78153\" style=\"width: 547px\" class=\"wp-caption aligncenter\"><img loading=\"lazy\" decoding=\"async\" class=\"size-full wp-image-78153 \" src=\"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2017\/04\/ClassificationTabs1.png\" alt=\"\" width=\"547\" height=\"115\" \/><figcaption id=\"caption-attachment-78153\" class=\"wp-caption-text\">Classification tab<\/figcaption><\/figure>\n<p>The Image Classification Wizard is a pane with 8 possible steps (pages) to classify your image:<\/p>\n<ul>\n<li>Configure<\/li>\n<li>Segmentation<\/li>\n<li>Training Samples Manager<\/li>\n<li>Train<\/li>\n<li>Classify<\/li>\n<li>Merge ClassesAssign Classes<\/li>\n<li>Accuracy Assessment<\/li>\n<li>Reclassifier<\/li>\n<\/ul>\n<p><strong>Step 1: Configure<\/strong><\/p>\n<figure id=\"attachment_78228\" aria-describedby=\"caption-attachment-78228\" style=\"width: 185px\" class=\"wp-caption alignleft\"><img loading=\"lazy\" decoding=\"async\" class=\"size-full wp-image-78228\" src=\"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2017\/04\/Configure_Menu5.png\" alt=\"\" width=\"185\" height=\"564\" \/><figcaption id=\"caption-attachment-78228\" class=\"wp-caption-text\">Configure classification<\/figcaption><\/figure>\n<p>The first page in the <strong>Classification Wizard<\/strong> is the <strong>Configure<\/strong> step; its position in the workflow is indicated by the filled blue circle at the top of the wizard. The Configure page is where you set up the type of classification you want to perform and specify other files you will be using in your classification workflow. The parameters that are set on the Configure page \u00a0will affect which steps and pages you need to work with in the workflow.<\/p>\n<p>You&#8217;ll want to perform a supervised object-oriented classification of impervious surfaces. The <strong>Classification Schema<\/strong> is a file that specifies the legend or classes that will be used. You can use an existing schema, or use the default schema and modify it \u2013 in this case use the default schema which is based on the USGS NLCD schema. You will create a new segmented image in the next step, so leave that parameter blank. The <strong>Training Samples<\/strong> input is a file that already contains polygon features of training samples. If you already have them, you can specify a file.\u00a0 In this case you will create new training samples.<\/p>\n<p>The last parameter is the <strong>Reference Dataset<\/strong>. This is the dataset of known classes that will be used to test the accuracy of our classification. Since this is a new classification we do not currently have a reference dataset and we will skip this step.\u00a0 The topic of accuracy assessment will be addressed in part 3 of this blog series. Once you have filled out the parameters you want to specify, click <strong>Next<\/strong>.<\/p>\n<p><strong>Step 2: Image Segmentation<\/strong><\/p>\n<p>The Segmentation page will allow you to set up your image to be segmented into objects having similar color, shape and size characteristics. Use the three sliders to specify how you want to perform your segmentation. Generally, higher detail settings result in more discrimination between features and smaller objects, while lower settings result in more smoothing and larger objects. Because impervious surface features can consist of spatial objects having a wide range of size and shapes, the relative importance of the spectral information is greater than the spatial information. Usually the best practice for delineating impervious surface features is to set a higher value for <strong>spectral detail<\/strong> such as <strong>16<\/strong>, and a lower <strong>spatial detail<\/strong> value such as <strong>12<\/strong>.<\/p>\n<p>The <strong>minimum size in pixels<\/strong> slider depends on your minimum mapping unit for your project.\u00a0 So if you want to identify a small 8 foot x 8 foot shed and the resolution of your imagery is 50cm, then your minimum mapping unit is about <strong>20<\/strong> pixels. If you want to see what the segmented image would look like, click the <strong>Preview<\/strong> button.\u00a0 You can continue to tweak your values until you are happy with the segmentation result. Leave the rest of the parameters as defaults and click <strong>Next<\/strong>. The segmented layer is created and loaded in the contents pane.<\/p>\n<figure id=\"attachment_78156\" aria-describedby=\"caption-attachment-78156\" style=\"width: 550px\" class=\"wp-caption aligncenter\"><img loading=\"lazy\" decoding=\"async\" class=\"size-full wp-image-78156 \" src=\"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2017\/04\/B4_Segmentation_5501.png\" alt=\"\" width=\"550\" height=\"511\" \/><figcaption id=\"caption-attachment-78156\" class=\"wp-caption-text\">Color infrared image before segmentation<\/figcaption><\/figure>\n<figure id=\"attachment_78157\" aria-describedby=\"caption-attachment-78157\" style=\"width: 550px\" class=\"wp-caption aligncenter\"><img loading=\"lazy\" decoding=\"async\" class=\"size-full wp-image-78157 \" src=\"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2017\/04\/After_Segmentation_5501.png\" alt=\"\" width=\"550\" height=\"511\" \/><figcaption id=\"caption-attachment-78157\" class=\"wp-caption-text\">Segmented color infrared image<\/figcaption><\/figure>\n<p>The top image is the multispectral source image dataset that you want to segment; the bottom image is the segmented image. The segmented image is more generalized by grouping similar neighboring pixels together into segments called objects.<\/p>\n<p><strong>Step 3: Training Samples Manager<br \/>\n<\/strong><\/p>\n<p>The <strong>Training Samples Manager<\/strong> is the third page of the wizard, and is populated with the default schema that you specified on the Configure page (NLCD2011).\u00a0 First you will modify the default schema for <em>Impervious<\/em> and <em>Pervious<\/em> classes.<\/p>\n<ol>\n<li>The default schema has 7 parent classes; delete all the classes except for <em>Developed<\/em> and <em>Forest<\/em> by right clicking on the class and selecting <strong>Remove<\/strong>.<\/li>\n<li>Create an Impervious class by right clicking on the Developed class and selecting <strong>Edit Properties<\/strong> which opens the properties page.<\/li>\n<li>Change the name to <em>Impervious<\/em> and select a grey color and click <strong>OK<\/strong>.<\/li>\n<li>Edit the name of the Forest parent class to <em>Pervious,<\/em> and expand the <em>Pervious<\/em> parent class to expose the subclasses.<\/li>\n<li>Delete Mixed Forest, and remove \u201cForest\u201d from the Deciduous and Evergreen subclass names via the <em>Edit<\/em> dialog.<\/li>\n<\/ol>\n<p>Next you will add additional subclasses to our schema.<\/p>\n<figure id=\"attachment_78323\" aria-describedby=\"caption-attachment-78323\" style=\"width: 316px\" class=\"wp-caption alignleft\"><img loading=\"lazy\" decoding=\"async\" class=\"size-full wp-image-78323 noIMGBackground \" src=\"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2017\/04\/Training_Manager1.png\" alt=\"\" width=\"316\" height=\"769\" \/><figcaption id=\"caption-attachment-78323\" class=\"wp-caption-text\">Training Samples Manager showing updated schema<br \/>and user interface for collecting training samples<\/figcaption><\/figure>\n<ol>\n<li>Right click on the <em>Pervious<\/em> parent class and <strong>Add New Class<\/strong> named <em>Turf<\/em>, give it a green color and a value of <strong>41<\/strong> and click <strong>OK<\/strong>.<\/li>\n<li>Add additional pervious subclasses named <em>Bare<\/em> and <em>Turf Shadow<\/em>, give them an appropriate color, and a value of <strong>42<\/strong> and <strong>43<\/strong> respectively.<\/li>\n<li>Right click on the newly named <em>Impervious<\/em> parent class and select <strong>Add New Class<\/strong> and add the following impervious subclasses:\u00a0 <em>Bright Roof, Grey Roof, Other Roof, Concrete, Asphalt, Water, Concrete Shadow<\/em> and <em>Asphalt Shadow<\/em>, and give them values of <strong>21<\/strong>, <strong>22<\/strong>, <strong>23<\/strong>, <strong>24<\/strong>, <strong>25<\/strong>, <strong>26<\/strong>, <strong>27<\/strong> and <strong>28<\/strong> respectively, and assign different grey intensity colors to each, except blue for water.<\/li>\n<\/ol>\n<p><strong>Note<\/strong> that water is often assigned to the impervious class for stormwater management purposes.\u00a0 You now have your classification schema for impervious surface feature mapping.<\/p>\n<ol>\n<li>To start collecting training samples, choose a subclass in the schema such as <em>Bright Roof<\/em> which activates the drawing tools.<\/li>\n<li>Since we have a segmented image in the display, we can use the <strong>Segment Picker <\/strong><img loading=\"lazy\" decoding=\"async\" class=\"alignnone wp-image-78238 noIMGBackground\" src=\"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2017\/04\/Segment_Picker3.png\" alt=\"\" width=\"35\" height=\"28\" \/>tool to choose entire segments.\u00a0 Select the segment layer from the Segment Picker dropdown list to activate it.<\/li>\n<li>You will need to zoom into the segmented image and choose an area that represents the class you have chosen. With the Segment Picker active, click on an area in the display to create a new training sample polygon segment.<\/li>\n<li>Note &#8211; you may also turn off the segment layer in the <strong>Contents<\/strong> pane and collect training samples using the multispectral image in the display.<\/li>\n<li>Click on the image and the corresponding segment will be captured as a training sample polygon.<\/li>\n<li>Pan and zoom around to capture many samples for each class. Having a few training samples in each part of the image will provide good results in the classification phase. To help you navigate around and choose classes, use the keyboard shortcuts that are available. The <strong>C<\/strong> shortcut key is used to change your cursor into the <strong>Pan<\/strong> tool.<\/li>\n<li>Make sure that you have a good number of samples and percentage of pixels or segments for each of the classes that you are classifying \u2013 30 or more for each class is a good target. Depending on your image, you may have more training samples for a certain class since it occurs more often within the image.<\/li>\n<li>To see the total samples and percentage of pixels, <strong>Collapse<\/strong> <img loading=\"lazy\" decoding=\"async\" class=\"alignnone size-full wp-image-78163 noIMGBackground\" src=\"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2017\/04\/Collapse_Icon3.png\" alt=\"\" width=\"31\" height=\"22\" \/>all of the training samples belonging to the same class.<\/li>\n<li>Once you have a good set of training samples of each Impervious and Pervious subclass, click <strong>Next<\/strong> to move onto the next step.<\/li>\n<\/ol>\n<p><strong>Step 4: Train the Classifier<\/strong><\/p>\n<p>The <strong>Train<\/strong> page allows you to choose the type of classifier to use, and edit the parameters associated with that classifier. We will choose the non-parametric <strong>Random Trees<\/strong> classifier which has several advantages over other classifiers. It is one of the most accurate learning algorithms available in the discipline with reduced need for a normal distribution and similar sample size of the training sample data, gives an estimate of what variables are important in the classification, generates an internal unbiased estimate of error and runs efficiently on large databases.<\/p>\n<p>Under the <strong>Segment Attributes<\/strong> dropdown, choose <strong>Mean digital number<\/strong> and <strong>Standard Deviation<\/strong>, and use the remaining default parameter values and then click <strong>Run<\/strong>. This step is a particularly computationally intensive part of the wizard and may take some time.\u00a0 Two process are kicked off, the image segmentation and computing the training of the classifier, both are written to the output directory.<\/p>\n<p>Once the training has been completed, the classification preview will be displayed. If the classification looks relatively accurate, you can click <strong>Next<\/strong> to save the classification.\u00a0 If you feel that you want alter the training samples, you can click the <strong>Previous<\/strong> button and continue to edit training samples in the Training Samples Manager.\u00a0 A rule of thumb is to collect training samples of misclassified features and assign the proper class to the training sample.\u00a0 This approach refines the classification by focusing on correctly identifying misclassified features.\u00a0 Once satisfied, click <strong>Next<\/strong> and then <strong>Run<\/strong> on the Training Samples Manager page to reclassify using the updated training sample file. Also keep in mind that you can always reclassify specific segmentspixels later on in the workflow.\u00a0 Once satisfied with the classification results in the preview, click <strong>Next<\/strong>.<\/p>\n<p><strong>Step 5: Create the Initial Class Map<\/strong><\/p>\n<p>On the <strong>Classify<\/strong> page, you can specify the names of the classification output which will be saved to the <strong>Output Location<\/strong> that was specified on the <strong>Configure<\/strong> page. Once you have specified the output names, click <strong>Run <\/strong>to create all the classification outputs. This is another computationally intensive parts of the wizard, which may take a while to process.<\/p>\n<figure id=\"attachment_78162\" aria-describedby=\"caption-attachment-78162\" style=\"width: 550px\" class=\"wp-caption aligncenter\"><img loading=\"lazy\" decoding=\"async\" class=\"size-full wp-image-78162 \" src=\"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2017\/04\/Classification_All_Classes1.png\" alt=\"\" width=\"550\" height=\"500\" \/><figcaption id=\"caption-attachment-78162\" class=\"wp-caption-text\">Initial classification map containing all classes<\/figcaption><\/figure>\n<p><strong>\u00a0Step 6: Merge Classes<\/strong><\/p>\n<p>When the classification is complete, the thematic classified raster (see above) is created and is added to the <strong>Contents<\/strong> pane. Click the <strong>Next<\/strong> button to bring up the supervised <strong>Merge Classes<\/strong> page displaying a preview of the merged classes. Here you can choose to merge your subclasses into their parent class. Since we only want impervious and pervious surface features we can use the dropdown arrows to choose <em>Impervious<\/em> and <em>Pervious<\/em> as the new classes.\u00a0 Click <strong>Next <\/strong>to generate the updated Impervious Surface class map and progress to the next page in the classification wizard.<\/p>\n<figure id=\"attachment_78165\" aria-describedby=\"caption-attachment-78165\" style=\"width: 550px\" class=\"wp-caption aligncenter\"><img loading=\"lazy\" decoding=\"async\" class=\"size-full wp-image-78165 \" src=\"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2017\/04\/Classification_Imperv_Perv1.png\" alt=\"\" width=\"550\" height=\"498\" \/><figcaption id=\"caption-attachment-78165\" class=\"wp-caption-text\">Impervious Surface class map of Gentilly<\/figcaption><\/figure>\n<p><strong>Step 7: Reclassify<\/strong><\/p>\n<p>The <strong>Reclassifier<\/strong> page allows us to manually edit classes that are visually incorrect. You can use two types of tools reclassify incorrect pixels to the correct category. The purpose of this step is to fix a few misclassified pixels or objects, instead of re-running the entire classification wizard again. Use the\u00a0<strong>Reclassify within a region<\/strong> tool to delineate a region where all the class polygons of one class type are reassigned to another class. Use the <strong>Reclassify an object<\/strong> tool to select a single class polygon and reassign it to another class.<\/p>\n<p>Once you have reclassified any incorrect pixels, click <strong>Run<\/strong> to generate and save the final classification output. Once you click <strong>Finish<\/strong>, you have completed all the specified steps in the Image Classification wizard. Now you can see the impervious surface classes as grey and pervious areas as green.<\/p>\n<p>The Impervious \/ Pervious classification dataset is now ready to be used in your storm water management operations.<\/p>\n<p>Accuracy assessment is a very important step in an analytical classification workflow.\u00a0 The accuracy assessment step was skipped in this workflow in order to get a reasonable classification map quickly.\u00a0 Accuracy assessment will be addressed in the final part of the Impervious Surface Mapping using Pro 1.4 blog series.<\/p>\n"}],"authors":[{"ID":5991,"user_firstname":"Jeff","user_lastname":"Liedtke","nickname":"Jeff Liedtke","user_nicename":"jliedtke","display_name":"Jeff Liedtke","user_email":"JLiedtke@esri.com","user_url":"","user_registered":"2018-03-02 00:17:51","user_description":"Jeff Liedtke is a PE and Documentation Lead for the Raster Team at Esri.  He has a background in remote sensing, photogrammetry and image processing. Applying remote sensing techniques to provide valuable information for operational decision support applications is his passion.","user_avatar":"<img data-del=\"avatar\" src='https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2018\/08\/jeff1.jpg' class='avatar pp-user-avatar avatar-96 photo ' height='96' width='96'\/>"}],"related_articles":[{"ID":75711,"post_author":"5991","post_date":"2017-02-23 17:45:47","post_date_gmt":"2017-02-23 17:45:47","post_content":"","post_title":"Impervious Surface Mapping using ArcGIS Pro \u2013 Part 1: Georeferencing","post_excerpt":"","post_status":"publish","comment_status":"closed","ping_status":"closed","post_password":"","post_name":"impervious-surface-mapping-using-pro-1-4-part-1-georeferencing","to_ping":"","pinged":"","post_modified":"2019-12-16 08:33:52","post_modified_gmt":"2019-12-16 16:33:52","post_content_filtered":"","post_parent":0,"guid":"http:\/\/www.esri.com\/arcgis-blog\/products\/product\/uncategorized\/impervious-surface-mapping-using-pro-1-4-part-1-georeferencing\/","menu_order":0,"post_type":"blog","post_mime_type":"","comment_count":"0","filter":"raw"},{"ID":122561,"post_author":"4911","post_date":"2013-09-26 06:00:24","post_date_gmt":"2013-09-26 06:00:24","post_content":"","post_title":"Stormwater Utility Mapping of Impervious Area","post_excerpt":"","post_status":"publish","comment_status":"open","ping_status":"closed","post_password":"","post_name":"stormwater-utility-mapping-of-impervious-area","to_ping":"","pinged":"","post_modified":"2013-09-26 06:00:24","post_modified_gmt":"2013-09-26 06:00:24","post_content_filtered":"","post_parent":0,"guid":"http:\/\/www.esri.com\/arcgis-blog\/products\/product\/uncategorized\/stormwater-utility-mapping-of-impervious-area\/","menu_order":0,"post_type":"blog","post_mime_type":"","comment_count":"0","filter":"raw"}],"card_image":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2017\/04\/Blog_Card_image.png","wide_image":"https:\/\/www.esri.com\/arcgis-blog\/app\/uploads\/2017\/04\/Blog_Banner_image-1.jpg"},"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>Impervious Surface Mapping Using ArcGIS Pro \u2013 Part 2: Classification<\/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\/imagery\/imagery\/impervious-surface-mapping-using-pro-1-4-part-2-classification\" \/>\n<meta property=\"og:locale\" content=\"en_US\" \/>\n<meta property=\"og:type\" content=\"article\" \/>\n<meta property=\"og:title\" content=\"Impervious Surface Mapping Using ArcGIS Pro \u2013 Part 2: Classification\" \/>\n<meta property=\"og:url\" content=\"https:\/\/www.esri.com\/arcgis-blog\/products\/imagery\/imagery\/impervious-surface-mapping-using-pro-1-4-part-2-classification\" \/>\n<meta property=\"og:site_name\" content=\"ArcGIS Blog\" \/>\n<meta property=\"article:publisher\" content=\"https:\/\/www.facebook.com\/esrigis\/\" \/>\n<meta property=\"article:modified_time\" content=\"2022-08-25T20:02:27+00:00\" \/>\n<meta name=\"twitter:card\" content=\"summary_large_image\" \/>\n<meta name=\"twitter:site\" content=\"@ESRI\" \/>\n<script type=\"application\/ld+json\" class=\"yoast-schema-graph\">{\"@context\":\"https:\/\/schema.org\",\"@graph\":[{\"@type\":[\"Article\",\"BlogPosting\"],\"@id\":\"https:\/\/www.esri.com\/arcgis-blog\/products\/imagery\/imagery\/impervious-surface-mapping-using-pro-1-4-part-2-classification#article\",\"isPartOf\":{\"@id\":\"https:\/\/www.esri.com\/arcgis-blog\/products\/imagery\/imagery\/impervious-surface-mapping-using-pro-1-4-part-2-classification\"},\"author\":{\"name\":\"Jeff Liedtke\",\"@id\":\"https:\/\/www.esri.com\/arcgis-blog\/#\/schema\/person\/c58e49dad72737322a3561320491adb3\"},\"headline\":\"Impervious Surface Mapping Using ArcGIS Pro \u2013 Part 2: Classification\",\"datePublished\":\"2017-04-27T14:29:43+00:00\",\"dateModified\":\"2022-08-25T20:02:27+00:00\",\"mainEntityOfPage\":{\"@id\":\"https:\/\/www.esri.com\/arcgis-blog\/products\/imagery\/imagery\/impervious-surface-mapping-using-pro-1-4-part-2-classification\"},\"wordCount\":8,\"publisher\":{\"@id\":\"https:\/\/www.esri.com\/arcgis-blog\/#organization\"},\"keywords\":[\"hydro\",\"Utilities\",\"water utilities\"],\"articleSection\":[\"Imagery &amp; 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