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supplementary-contours.RegionWidth.pyt.xml
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supplementary-contours.RegionWidth.pyt.xml
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<metadata xml:lang="ru"><Esri><CreaDate>20190629</CreaDate><CreaTime>19252900</CreaTime><ArcGISFormat>1.0</ArcGISFormat><SyncOnce>TRUE</SyncOnce><ModDate>20190703</ModDate><ModTime>23181800</ModTime><scaleRange><minScale>150000000</minScale><maxScale>5000</maxScale></scaleRange><ArcGISProfile>ItemDescription</ArcGISProfile></Esri><tool name="RegionWidth" displayname="Region width" toolboxalias="" xmlns=""><arcToolboxHelpPath>c:\program files (x86)\arcgis\desktop10.5\Help\gp</arcToolboxHelpPath><parameters><param name="in_features" displayname="Input features" type="Required" direction="Input" datatype="Feature Layer" expression="in_features"><dialogReference><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN>Input features to be used as region boundaries. </SPAN></P><P><SPAN>These can be any spatial features. For supplementary contours generation, the result of </SPAN><SPAN STYLE="font-weight:bold;">Region borders </SPAN><SPAN>tool should be used.</SPAN></P></DIV></DIV></DIV></dialogReference></param><param name="out_raster" displayname="Output region width raster" type="Required" direction="Output" datatype="Raster Dataset" expression="out_raster"><dialogReference><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN>Output region width raster.</SPAN></P></DIV></DIV></DIV></dialogReference></param><param name="cell_size" displayname="Output cell size" type="Required" direction="Input" datatype="Double" expression="cell_size"><dialogReference><DIV STYLE="text-align:Left;"><DIV><P><SPAN>Cell size used for generation of region width raster. It can be selected freely, without any dependency on the input raster DEM cell size. The smaller the cell size, the more precise the region width estimation. However, extremely small values may cause long computation time. Set reasonably.</SPAN></P></DIV></DIV></dialogReference></param><param name="snap_raster" displayname="Snap raster" type="Optional" direction="Input" datatype="Raster Layer" expression="{snap_raster}"><dialogReference><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN>A raster used to snap the resulting region width raster. Width and centrality rasters must be aligned and must have the same geometry. Therefore, if a centrality raster is computed first, then it should be used as snap raster in </SPAN><SPAN STYLE="font-weight:bold;">Region width </SPAN><SPAN>tool, and vice versa.</SPAN></P></DIV></DIV></DIV></dialogReference></param><param name="interest" displayname="Regions of interest" type="Required" direction="Input" datatype="String" expression="ALL | INSIDE POLYGONS | OUTSIDE POLYGONS"><dialogReference><DIV STYLE="text-align:Left;"><DIV><P><SPAN>This parameter can be used to limit locations for which the region width will be estimated. It can be used to speed up computations, if</SPAN><SPAN> </SPAN><SPAN>region width only inside or outside polygons is of interest. There are three options available:</SPAN></P><UL><LI><P><SPAN>ALL - region width will be estimated at any point inside the envelope (extent) of the input features. Available for point, line and polygon input features.</SPAN></P></LI><LI><P><SPAN>INSIDE POLYGONS - region width will be estimated inside polygons. All other locations will be NoData. This mode is used during the estimation of average region width of closed supplementary contours. Available for polygon input features only.</SPAN></P></LI><LI><P><SPAN>OUTSIDE POLYGONS - region width will be estimated outside polygons. All other locations will be NoData. Available for polygon input features only.</SPAN></P></LI></UL></DIV></DIV></dialogReference></param><param name="mode" displayname="Computation mode" type="Required" direction="Input" datatype="String" expression="CPP | PYTHON"><dialogReference><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN>The mode used for computation of region width raster:</SPAN></P><UL><LI><P><SPAN>CPP - fast external compiled C++ module.</SPAN></P></LI><LI><P><SPAN>PYTHON - straight Python implementation of the same algorithm. Much slower than CPP version.</SPAN></P></LI></UL><P><SPAN>Default value is </SPAN><SPAN STYLE="font-weight:bold;">CPP</SPAN><SPAN>. If loading of external module fails, then only PYTHON option will be available.</SPAN></P></DIV></DIV></DIV></dialogReference></param></parameters><summary><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN>This tool calculates a raster that gives the estimation of a free space between regular contour.</SPAN></P><P><SPAN>Regular contour lines and the border of the map divide the mapped area into a set of </SPAN><SPAN STYLE="font-style:italic;">regions</SPAN><SPAN>. Each region can potentially contain a supplementary contour line. Region width is used to (a) ensure there is enough space to place a supplementary contour and (b) identify excessively wide regions in flat areas where supplementary contour lines are included, even if they are close to the centre of the region. Since a supplementary contour can be located anywhere within a region, an estimate of region width is required for any point within a region</SPAN><SPAN STYLE="font-size:12pt">. </SPAN><SPAN>This is done by </SPAN><SPAN STYLE="font-weight:bold;">Region width </SPAN><SPAN>tool using a raster-based approach.</SPAN></P><P><SPAN>Region width is calculated using the following algorithm:</SPAN></P><OL><LI><P><SPAN>Calculate Euclidean distance raster for regular contours.</SPAN></P></LI><LI><P><SPAN>Allocate a new zero-filled output raster with the same geometry.</SPAN></P></LI><LI><P><SPAN>Propagate the </SPAN><SPAN STYLE="font-style:italic;">doubled</SPAN><SPAN>value of each cell of the euclidean distance raster to the output cells that are covered by the circle neighbourhood of the corresponding size. The resulting value is determined by the following rule: If a pixel is empty or has a value smaller than the doubled value of the distance raster, then its value is replaced with the doubled value of the distance raster; otherwise it remains unchanged. </SPAN></P></LI></OL><P><SPAN>A detailed description of the method can be found in the following paper:</SPAN></P><P><SPAN STYLE="font-style:italic;">Samsonov T., Koshel S, Walther D., Jenny B. </SPAN><SPAN>Automated placement of supplementary contour lines // </SPAN><SPAN STYLE="font-weight:bold;">International Journal of Geographical Information Science</SPAN><SPAN>. — 2019. — Vol. 33. — DOI: 10.1080/13658816.2019.1610965</SPAN></P></DIV></DIV></DIV></summary><usage><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN>For detailed information on the tool usage please see the description of its parameters.</SPAN></P></DIV></DIV></DIV></usage></tool><dataIdInfo><idCitation><resTitle>Region width</resTitle></idCitation><searchKeys><keyword>supplementary contours</keyword></searchKeys><idCredit>2017-2019, Timofey Samsonov & Dmitry Walther, Lomonosov Moscow State University.</idCredit><idAbs><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN>This tool calculates a raster that gives the estimation of a free space between regular contour.</SPAN></P><P><SPAN>Regular contour lines and the border of the map divide the mapped area into a set of </SPAN><SPAN STYLE="font-style:italic;">regions</SPAN><SPAN>. Each region can potentially contain a supplementary contour line. Region width is used to (a) ensure there is enough space to place a supplementary contour and (b) identify excessively wide regions in flat areas where supplementary contour lines are included, even if they are close to the centre of the region. Since a supplementary contour can be located anywhere within a region, an estimate of region width is required for any point within a region</SPAN><SPAN STYLE="font-size:12pt">. </SPAN><SPAN>This is done by </SPAN><SPAN STYLE="font-weight:bold;">Region width </SPAN><SPAN>tool using a raster-based approach.</SPAN></P><P><SPAN>Region width is calculated using the following algorithm:</SPAN></P><OL><LI><P><SPAN>Calculate Euclidean distance raster for regular contours.</SPAN></P></LI><LI><P><SPAN>Allocate a new zero-filled output raster with the same geometry.</SPAN></P></LI><LI><P><SPAN>Propagate the </SPAN><SPAN STYLE="font-style:italic;">doubled</SPAN><SPAN>value of each cell of the euclidean distance raster to the output cells that are covered by the circle neighbourhood of the corresponding size. The resulting value is determined by the following rule: If a pixel is empty or has a value smaller than the doubled value of the distance raster, then its value is replaced with the doubled value of the distance raster; otherwise it remains unchanged. </SPAN></P></LI></OL><P><SPAN>A detailed description of the method can be found in the following paper:</SPAN></P><P><SPAN STYLE="font-style:italic;">Samsonov T., Koshel S, Walther D., Jenny B. </SPAN><SPAN>Automated placement of supplementary contour lines // </SPAN><SPAN STYLE="font-weight:bold;">International Journal of Geographical Information Science</SPAN><SPAN>. — 2019. — Vol. 33. — DOI: 10.1080/13658816.2019.1610965</SPAN></P></DIV></DIV></DIV></idAbs></dataIdInfo><distInfo><distributor><distorFormat><formatName>ArcToolbox Tool</formatName></distorFormat></distributor></distInfo><mdHrLv><ScopeCd value="005"/></mdHrLv><mdDateSt Sync="TRUE">20190703</mdDateSt><Binary><Thumbnail><Data EsriPropertyType="PictureX">/9j/4AAQSkZJRgABAQEAkACQAAD/4gxYSUNDX1BST0ZJTEUAAQEAAAxITGlubwIQAABtbnRyUkdC
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