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805 lines (800 loc) · 78.1 KB
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<?xml version="1.0"?>
<metadata xml:lang="en"><Esri><CreaDate>20201208</CreaDate><CreaTime>09502200</CreaTime><ArcGISFormat>1.0</ArcGISFormat><SyncOnce>TRUE</SyncOnce><ModDate>20260616</ModDate><ModTime>11274800</ModTime><scaleRange><minScale>150000000</minScale><maxScale>5000</maxScale></scaleRange><ArcGISProfile>ItemDescription</ArcGISProfile></Esri><tool name="Openness_High_Tool" displayname="Openness Tool Bathymetric High" toolboxalias="BathymetricHigh" xmlns=""><arcToolboxHelpPath>c:\program files\arcgis\pro\Resources\Help\gp</arcToolboxHelpPath><parameters><param name="bathyRas" displayname="Input Bathymetry Raster" type="Required" direction="Input" datatype="Raster Layer" expression="bathyRas"><dialogReference><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN STYLE="font-weight:bold;">This is the input bathymetry raster.</SPAN></P></DIV></DIV></DIV></dialogReference><pythonReference><DIV STYLE="text-align:Left;"><DIV><P><SPAN STYLE="font-weight:bold;">This is the input bathymetry raster.</SPAN></P></DIV></DIV></pythonReference></param><param name="noRas" displayname="Output Negative Openness Raster" type="Required" direction="Output" datatype="Raster Dataset" expression="noRas"><dialogReference><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN STYLE="font-weight:bold;">This is the output </SPAN><SPAN STYLE="font-weight:bold;">Negative Openness</SPAN><SPAN STYLE="font-weight:bold;"> raster.</SPAN><SPAN STYLE="font-weight:bold;"> After the first run, the NO raster will be copied to the temporary workspace. This NO raster will be re-used in the subsequent runs to save time as long as the raster name entered matches the one in the temporary workspace.</SPAN></P></DIV></DIV></DIV></dialogReference><pythonReference><DIV STYLE="text-align:Left;"><DIV><P><SPAN STYLE="font-weight:bold;">This is the output </SPAN><SPAN STYLE="font-weight:bold;">Negative Openness</SPAN><SPAN STYLE="font-weight:bold;"> raster.</SPAN><SPAN STYLE="font-weight:bold;"> After the first run, the NO raster will be copied to the temporary workspace. This NO raster will be re-used in the subsequent runs to save time as long as the raster name entered matches the one in the temporary workspace.</SPAN></P></DIV></DIV></pythonReference></param><param name="outFeat" displayname="Output Feature" type="Required" direction="Output" datatype="Feature Class" expression="outFeat"><dialogReference><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN STYLE="font-weight:bold;">This is </SPAN><SPAN STYLE="font-weight:bold;">the output</SPAN><SPAN STYLE="font-weight:bold;"> feature class delineates the bathymetric high features.</SPAN></P><P><SPAN /></P></DIV></DIV></DIV></dialogReference><pythonReference><DIV STYLE="text-align:Left;"><DIV><P><SPAN STYLE="font-weight:bold;">This is </SPAN><SPAN STYLE="font-weight:bold;">the output</SPAN><SPAN STYLE="font-weight:bold;"> feature class delineates the bathymetric high features.</SPAN></P></DIV></DIV></pythonReference></param><param name="areaThreshold" displayname="Area Threshold" type="Required" direction="Input" datatype="Areal Unit" expression="areaThreshold"><dialogReference><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN STYLE="font-weight:bold;">The threshold of polygon area. </SPAN><SPAN STYLE="font-weight:bold;">All resulted bathymetric high feature polygons should have areas greater than this threshold. </SPAN></P><P><SPAN /></P></DIV></DIV></DIV></dialogReference><pythonReference><DIV STYLE="text-align:Left;"><DIV><P><SPAN STYLE="font-weight:bold;">The threshold of polygon area. </SPAN><SPAN STYLE="font-weight:bold;">All resulted bathymetric high feature polygons should have areas greater than this threshold. </SPAN></P></DIV></DIV></pythonReference></param><param name="noRadius" displayname="Openness Circle Radius (unit: cell)" type="Required" direction="Input" datatype="Long" expression="noRadius"><dialogReference><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN STYLE="font-weight:bold;">This is the radius used to calculate the output </SPAN><SPAN STYLE="font-weight:bold;">Negative Openness</SPAN><SPAN STYLE="font-weight:bold;"> raster.</SPAN></P></DIV></DIV></DIV></dialogReference><pythonReference><DIV STYLE="text-align:Left;"><DIV><P><SPAN STYLE="font-weight:bold;">This is the radius used to calculate the output </SPAN><SPAN STYLE="font-weight:bold;">Negative Openness</SPAN><SPAN STYLE="font-weight:bold;"> raster.</SPAN></P></DIV></DIV></pythonReference></param><param name="noSTDScaleLarge" displayname="NO STD Scale Large" type="Optional" direction="Input" datatype="Double" expression="{noSTDScaleLarge}"><dialogReference><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN STYLE="font-weight:bold;">This is the constant value (c) applied to the standard deviation (STD) of the output </SPAN><SPAN STYLE="font-weight:bold;">Negative Openness</SPAN><SPAN STYLE="font-weight:bold;"> </SPAN><SPAN STYLE="font-weight:bold;">(NO) </SPAN><SPAN STYLE="font-weight:bold;">raster to calculate the </SPAN><SPAN STYLE="font-weight:bold;">(large) </SPAN><SPAN STYLE="font-weight:bold;">Negative Openness</SPAN><SPAN STYLE="font-weight:bold;"> threshold. </SPAN></P><P><SPAN STYLE="font-weight:bold;">NO</SPAN><SPAN STYLE="font-weight:bold;"> threshold = </SPAN><SPAN STYLE="font-weight:bold;">mean_NO - c * STD_NO</SPAN><SPAN STYLE="font-weight:bold;">, where mean</SPAN><SPAN STYLE="font-weight:bold;">_</SPAN><SPAN STYLE="font-weight:bold;">NO</SPAN><SPAN STYLE="font-weight:bold;"> is the mean of the output </SPAN><SPAN STYLE="font-weight:bold;">NO</SPAN><SPAN STYLE="font-weight:bold;"> raster.</SPAN><SPAN STYLE="font-weight:bold;"> This constant value must be larger the </SPAN><SPAN STYLE="font-weight:bold;">'NO STD Scale Small' </SPAN><SPAN STYLE="font-weight:bold;">parameter</SPAN><SPAN STYLE="font-weight:bold;">.</SPAN></P></DIV></DIV></DIV></dialogReference><pythonReference><DIV STYLE="text-align:Left;"><P><SPAN STYLE="font-weight:bold;">This is the constant value (c) applied to the standard deviation (STD) of the output </SPAN><SPAN STYLE="font-weight:bold;">Negative Openness</SPAN><SPAN STYLE="font-weight:bold;"> </SPAN><SPAN STYLE="font-weight:bold;">(NO) </SPAN><SPAN STYLE="font-weight:bold;">raster to calculate the </SPAN><SPAN STYLE="font-weight:bold;">(large) </SPAN><SPAN STYLE="font-weight:bold;">Negative Openness</SPAN><SPAN STYLE="font-weight:bold;"> threshold. </SPAN></P><P><SPAN STYLE="font-weight:bold;">NO</SPAN><SPAN STYLE="font-weight:bold;"> threshold = </SPAN><SPAN STYLE="font-weight:bold;">mean_NO - c * STD_NO</SPAN><SPAN STYLE="font-weight:bold;">, where mean</SPAN><SPAN STYLE="font-weight:bold;">_</SPAN><SPAN STYLE="font-weight:bold;">NO</SPAN><SPAN STYLE="font-weight:bold;"> is the mean of the output </SPAN><SPAN STYLE="font-weight:bold;">NO</SPAN><SPAN STYLE="font-weight:bold;"> raster.</SPAN><SPAN STYLE="font-weight:bold;"> This constant value must be larger the </SPAN><SPAN STYLE="font-weight:bold;">'NO STD Scale Small' </SPAN><SPAN STYLE="font-weight:bold;">parameter</SPAN><SPAN STYLE="font-weight:bold;">.</SPAN></P></DIV></pythonReference></param><param name="noSTDScaleSmall" displayname="NO STD Scale Small" type="Optional" direction="Input" datatype="Double" expression="{noSTDScaleSmall}"><dialogReference><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN STYLE="font-weight:bold;">This is the constant value (c) applied to the standard deviation (STD) of the output </SPAN><SPAN STYLE="font-weight:bold;">Negative Openness</SPAN><SPAN STYLE="font-weight:bold;"> </SPAN><SPAN STYLE="font-weight:bold;">(NO) </SPAN><SPAN STYLE="font-weight:bold;">raster to calculate the </SPAN><SPAN STYLE="font-weight:bold;">(</SPAN><SPAN STYLE="font-weight:bold;">small</SPAN><SPAN STYLE="font-weight:bold;">) </SPAN><SPAN STYLE="font-weight:bold;">Negative Openness</SPAN><SPAN STYLE="font-weight:bold;"> threshold. </SPAN></P><P><SPAN STYLE="font-weight:bold;">NO</SPAN><SPAN STYLE="font-weight:bold;"> threshold = </SPAN><SPAN STYLE="font-weight:bold;">mean_NO - c * STD_NO</SPAN><SPAN STYLE="font-weight:bold;">, where mean</SPAN><SPAN STYLE="font-weight:bold;">_</SPAN><SPAN STYLE="font-weight:bold;">NO</SPAN><SPAN STYLE="font-weight:bold;"> is the mean of the output </SPAN><SPAN STYLE="font-weight:bold;">NO</SPAN><SPAN STYLE="font-weight:bold;"> raster.</SPAN><SPAN STYLE="font-weight:bold;"> This constant value must be </SPAN><SPAN STYLE="font-weight:bold;">samller </SPAN><SPAN STYLE="font-weight:bold;">than the </SPAN><SPAN STYLE="font-weight:bold;">'NO STD Scale Large'</SPAN><SPAN STYLE="font-weight:bold;"> parameter</SPAN><SPAN STYLE="font-weight:bold;">.</SPAN></P><P><SPAN /></P></DIV></DIV></DIV></dialogReference><pythonReference><DIV STYLE="text-align:Left;"><P><SPAN STYLE="font-weight:bold;">This is the constant value (c) applied to the standard deviation (STD) of the output </SPAN><SPAN STYLE="font-weight:bold;">Negative Openness</SPAN><SPAN STYLE="font-weight:bold;"> </SPAN><SPAN STYLE="font-weight:bold;">(NO) </SPAN><SPAN STYLE="font-weight:bold;">raster to calculate the </SPAN><SPAN STYLE="font-weight:bold;">(</SPAN><SPAN STYLE="font-weight:bold;">small</SPAN><SPAN STYLE="font-weight:bold;">) </SPAN><SPAN STYLE="font-weight:bold;">Negative Openness</SPAN><SPAN STYLE="font-weight:bold;"> threshold. </SPAN></P><P><SPAN STYLE="font-weight:bold;">NO</SPAN><SPAN STYLE="font-weight:bold;"> threshold = </SPAN><SPAN STYLE="font-weight:bold;">mean_NO - c * STD_NO</SPAN><SPAN STYLE="font-weight:bold;">, where mean</SPAN><SPAN STYLE="font-weight:bold;">_</SPAN><SPAN STYLE="font-weight:bold;">NO</SPAN><SPAN STYLE="font-weight:bold;"> is the mean of the output </SPAN><SPAN STYLE="font-weight:bold;">NO</SPAN><SPAN STYLE="font-weight:bold;"> raster.</SPAN><SPAN STYLE="font-weight:bold;"> This constant value must be </SPAN><SPAN STYLE="font-weight:bold;">samller </SPAN><SPAN STYLE="font-weight:bold;">than the </SPAN><SPAN STYLE="font-weight:bold;">'NO STD Scale Large'</SPAN><SPAN STYLE="font-weight:bold;"> parameter</SPAN><SPAN STYLE="font-weight:bold;">.</SPAN></P></DIV></pythonReference></param><param name="tempWS" displayname="Temporary Workspace" type="Required" direction="Input" datatype="Workspace" expression="tempWS"><dialogReference><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN STYLE="font-weight:bold;">This is the location of the temporary workspace to store the intermediate datasets.</SPAN></P></DIV></DIV></DIV></dialogReference><pythonReference><DIV STYLE="text-align:Left;"><DIV><P><SPAN STYLE="font-weight:bold;">This is the location of the temporary workspace to store the intermediate datasets.</SPAN></P></DIV></DIV></pythonReference></param></parameters><summary><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN>This tool maps bathymetric high features from a bathymetric data using a</SPAN><SPAN>n</SPAN><SPAN> </SPAN><SPAN>openness </SPAN><SPAN>based method</SPAN><SPAN> (Yokoyama et al., 2002)</SPAN><SPAN>.</SPAN><SPAN> </SPAN><SPAN>Smaller negative openness (NO) </SPAN><SPAN>usually indicates bathymetric high location. </SPAN><SPAN>The followings are the key steps</SPAN><SPAN> of this tool</SPAN><SPAN>.</SPAN></P><OL><LI><P><SPAN>Calculate </SPAN><SPAN>NO</SPAN><SPAN> from the input bathymetry raster using the "</SPAN><SPAN>Openness</SPAN><SPAN> Circle Radius" parameter.</SPAN></P></LI><LI><P><SPAN>Identify </SPAN><SPAN>the </SPAN><SPAN>possible 'tops' of the bathymetric high features from the bathymetry raster based on ArcGIS' </SPAN><SPAN>Sink </SPAN><SPAN>function.</SPAN></P></LI><LI><P><SPAN>Calculate the </SPAN><SPAN>NO</SPAN><SPAN> threshold using this equation: </SPAN><SPAN>NO</SPAN><SPAN> threshold = mean_</SPAN><SPAN>NO</SPAN><SPAN> </SPAN><SPAN>-</SPAN><SPAN> c * STD_</SPAN><SPAN>NO</SPAN><SPAN>, where c is the "</SPAN><SPAN>NO</SPAN><SPAN> STD Scale</SPAN><SPAN> Large</SPAN><SPAN>" parameter</SPAN><SPAN> or the "NO STD Scale Small" paramet</SPAN><SPAN>er</SPAN><SPAN>, mean_</SPAN><SPAN>NO</SPAN><SPAN> and STD_</SPAN><SPAN>NO</SPAN><SPAN> are the mean and standard deviation statistics of the </SPAN><SPAN>NO</SPAN><SPAN> raster. </SPAN></P></LI><LI><P><SPAN>Select </SPAN><SPAN>the first set of areas </SPAN><SPAN>that have </SPAN><SPAN>NO</SPAN><SPAN> values </SPAN><SPAN>smaller </SPAN><SPAN>than the </SPAN><SPAN>"</SPAN><SPAN>NO</SPAN><SPAN> STD Scale Large" </SPAN><SPAN>threshold.</SPAN></P></LI><LI><P><SPAN>Select </SPAN><SPAN>the second set of areas </SPAN><SPAN>that have </SPAN><SPAN>NO</SPAN><SPAN> values </SPAN><SPAN>smaller </SPAN><SPAN>than the </SPAN><SPAN>"</SPAN><SPAN>NO</SPAN><SPAN> STD Scale Small" </SPAN><SPAN>threshold.</SPAN></P></LI><LI><P><SPAN>Further select from the two sets of areas only those areas that contain 'tops'.</SPAN></P></LI><LI><P><SPAN>These two</SPAN><SPAN> new</SPAN><SPAN> sets of areas are used together </SPAN><SPAN>to identify individual </SPAN><SPAN>bathymetric high features, through GIS overlay and selection analyses. </SPAN></P></LI><LI><P><SPAN>If any polygons in the second set contain more than one polygon in the first set, the multiple polygons from the first set are selected as the first subset.</SPAN></P></LI><LI><P><SPAN>If any polygons in the second set contain only one polygon in the first set, the polygons from the second set are selected as the second subset.</SPAN></P></LI><LI><P><SPAN>Merge the above two subsets of polygons together to form </SPAN><SPAN>a </SPAN><SPAN>set of bathymetric high features</SPAN></P></LI><LI><P><SPAN>Remove </SPAN><SPAN>the </SPAN><SPAN>feature </SPAN><SPAN>polygons with areas smaller than the "Area Threshold" parameter</SPAN><SPAN> </SPAN><SPAN>to obtain the final set of bathymetric </SPAN><SPAN>high </SPAN><SPAN>features as output.</SPAN></P></LI></OL><P><SPAN>The</SPAN><SPAN> openness </SPAN><SPAN>radius should be large enough to capture the largest bathymetric high features in the dataset. For example, for a 5m resolution bathymetry raster, a radius of 50 cells should be used to capture any bathymetric high features that is smaller than 500 m in length. Users should also experiment the "</SPAN><SPAN>NO</SPAN><SPAN> STD Scale</SPAN><SPAN> Large</SPAN><SPAN>"</SPAN><SPAN>, the "NO STD Scale Small"</SPAN><SPAN> and the "Area Threshold" parameters to obtain an optimal output solution. </SPAN></P><P><SPAN>Yokoyama, R., Shirasawa, M., Pike, R.J., 2002. Visualising topography by openness: a new application of image processing to digital elevation models, Photogrammetric Engineering and Remote Sensing, 68, 257-265.</SPAN></P></DIV></DIV></DIV></summary><scriptExamples><scriptExample><title>Python script code sample</title><code>import arcpy
from arcpy import env
from arcpy.sa import *
arcpy.CheckOutExtension("Spatial")
# import the python toolbox
arcpy.ImportToolbox("C:/semi_automation_tools/User_Guide/Tools/BathymetricHigh.pyt")
env.workspace = 'C:/semi_automation_tools/testSampleCode/Gifford.gdb'
env.overwriteOutput = True
# specify input and output parameters of the tool
inBathy = 'gifford_bathy'
outNO = 'gifford_no10'
outFeat = 'no10_1std_300000m2_BH'
areaT = '300000 SquareMeters'
noRadius = 10
noSTDLarge = 2.0
noSTDSmall = 1.0
tempWorkspace = 'C:/Users/u56061/Documents/ArcGIS/Projects/UserGuide/UserGuide.gdb'
# execute the tool
arcpy.BathymetricHigh.Openness_High_Tool(inBathy,outNO,outFeat,areaT,noRadius,noSTDLarge,noSTDSmall,tempWorkspace)
</code></scriptExample></scriptExamples></tool><dataIdInfo><idCitation><resTitle>Openness Tool Bathymetric High</resTitle></idCitation><searchKeys><keyword>This tool maps bathymetric high features from a bathymetric data using an openness based method.</keyword></searchKeys><idCredit>(c) Commonwealth of Australia (Geoscience Australia) 2026</idCredit><resConst><Consts><useLimit><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN><SPAN>Creative Commons Attribution 4.0 International Licence</SPAN></SPAN></P></DIV></DIV></DIV></useLimit></Consts></resConst></dataIdInfo><distInfo><distributor><distorFormat><formatName>ArcToolbox Tool</formatName></distorFormat></distributor></distInfo><mdHrLv><ScopeCd value="005"/></mdHrLv><mdDateSt Sync="TRUE">20260616</mdDateSt><Binary><Thumbnail><Data EsriPropertyType="PictureX">/9j/4AAQSkZJRgABAQEAeAB4AAD/2wBDAAMCAgMCAgMDAwMEAwMEBQgFBQQEBQoHBwYIDAoMDAsK
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