<?xml version="1.0" encoding="UTF-8"?><metadata xml:lang="en">
<Esri>
<CreaDate>20260208</CreaDate>
<CreaTime>23234700</CreaTime>
<ArcGISFormat>1.0</ArcGISFormat>
<SyncOnce>FALSE</SyncOnce>
<DataProperties>
<itemProps>
<itemName Sync="FALSE">AirPly</itemName>
<nativeExtBox>
<westBL Sync="TRUE">390408.791500</westBL>
<eastBL Sync="TRUE">402333.351500</eastBL>
<southBL Sync="TRUE">130794.477000</southBL>
<northBL Sync="TRUE">141016.577000</northBL>
<exTypeCode Sync="TRUE">1</exTypeCode>
</nativeExtBox>
<imsContentType export="False">002</imsContentType>
</itemProps>
<coordRef>
<type Sync="TRUE">Projected</type>
<geogcsn Sync="TRUE">GCS_North_American_1983</geogcsn>
<csUnits Sync="TRUE">Linear Unit: Meter (1.000000)</csUnits>
<projcsn Sync="TRUE">NAD_1983_StatePlane_Maryland_FIPS_1900</projcsn>
<peXml Sync="TRUE">&lt;ProjectedCoordinateSystem xsi:type='typens:ProjectedCoordinateSystem' xmlns:xsi='http://www.w3.org/2001/XMLSchema-instance' xmlns:xs='http://www.w3.org/2001/XMLSchema' xmlns:typens='http://www.esri.com/schemas/ArcGIS/3.2.0'&gt;&lt;WKT&gt;PROJCS[&amp;quot;NAD_1983_StatePlane_Maryland_FIPS_1900&amp;quot;,GEOGCS[&amp;quot;GCS_North_American_1983&amp;quot;,DATUM[&amp;quot;D_North_American_1983&amp;quot;,SPHEROID[&amp;quot;GRS_1980&amp;quot;,6378137.0,298.257222101]],PRIMEM[&amp;quot;Greenwich&amp;quot;,0.0],UNIT[&amp;quot;Degree&amp;quot;,0.0174532925199433]],PROJECTION[&amp;quot;Lambert_Conformal_Conic&amp;quot;],PARAMETER[&amp;quot;False_Easting&amp;quot;,400000.0],PARAMETER[&amp;quot;False_Northing&amp;quot;,0.0],PARAMETER[&amp;quot;Central_Meridian&amp;quot;,-77.0],PARAMETER[&amp;quot;Standard_Parallel_1&amp;quot;,38.3],PARAMETER[&amp;quot;Standard_Parallel_2&amp;quot;,39.45],PARAMETER[&amp;quot;Latitude_Of_Origin&amp;quot;,37.66666666666666],UNIT[&amp;quot;Meter&amp;quot;,1.0],AUTHORITY[&amp;quot;EPSG&amp;quot;,26985]]&lt;/WKT&gt;&lt;XOrigin&gt;-36747099.999499999&lt;/XOrigin&gt;&lt;YOrigin&gt;-29091499.999000002&lt;/YOrigin&gt;&lt;XYScale&gt;1000&lt;/XYScale&gt;&lt;ZOrigin&gt;0&lt;/ZOrigin&gt;&lt;ZScale&gt;1&lt;/ZScale&gt;&lt;MOrigin&gt;0&lt;/MOrigin&gt;&lt;MScale&gt;1&lt;/MScale&gt;&lt;XYTolerance&gt;0.002&lt;/XYTolerance&gt;&lt;ZTolerance&gt;2&lt;/ZTolerance&gt;&lt;MTolerance&gt;0.001&lt;/MTolerance&gt;&lt;HighPrecision&gt;true&lt;/HighPrecision&gt;&lt;WKID&gt;26985&lt;/WKID&gt;&lt;LatestWKID&gt;26985&lt;/LatestWKID&gt;&lt;/ProjectedCoordinateSystem&gt;</peXml>
</coordRef>
</DataProperties>
<ArcGISProfile>FGDC</ArcGISProfile>
<SyncDate>20260220</SyncDate>
<SyncTime>10231500</SyncTime>
<ModDate>20260220</ModDate>
<ModTime>10231500</ModTime>
<scaleRange>
<minScale>150000000</minScale>
<maxScale>5000</maxScale>
</scaleRange>
</Esri>
<Binary>
<Thumbnail>
<Data EsriPropertyType="PictureX">/9j/4AAQSkZJRgABAQEBLAEsAAD/2wBDAAMCAgMCAgMDAwMEAwMEBQgFBQQEBQoHBwYIDAoMDAsK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</Data>
</Thumbnail>
</Binary>
<mdLang>
<languageCode value="eng"/>
<countryCode Sync="TRUE" value="USA"/>
</mdLang>
<mdChar>
<CharSetCd value="004"/>
</mdChar>
<mdHrLv>
<ScopeCd value="005"/>
</mdHrLv>
<mdHrLvName>dataset</mdHrLvName>
<mdContact>
<rpOrgName>Office of the Chief Technology Officer</rpOrgName>
<rpPosName>GIS Data Coordinator</rpPosName>
<role>
<RoleCd value="007"/>
</role>
</mdContact>
<mdDateSt Sync="TRUE">20260220</mdDateSt>
<distInfo>
<distFormat>
<formatName>File Geodatabase Feature Class</formatName>
</distFormat>
<distributor>
<distorOrdPrc>
<ordInstr>DC datasets can be downloaded from "https://opendata.dc.gov/".</ordInstr>
</distorOrdPrc>
<distorCont>
<rpOrgName>Office of the Chief Technology Officer</rpOrgName>
<rpPosName>GIS Data Coordinator</rpPosName>
<role>
<RoleCd value="007"/>
</role>
<rpCntInfo>
<cntAddress addressType="both">
<delPoint>200 I Street SE, 5th Floor</delPoint>
<city>Washington</city>
<adminArea>DC</adminArea>
<postCode>20003</postCode>
<eMailAdd>dcgis@dc.gov</eMailAdd>
<country>US</country>
</cntAddress>
<cntPhone>
<voiceNum tddtty="">(202) 727-2277</voiceNum>
<faxNum>(202) 727-6857</faxNum>
</cntPhone>
<cntHours>8:30 am - 5 pm</cntHours>
</rpCntInfo>
<displayName>Office of the Chief Technology Officer</displayName>
</distorCont>
</distributor>
</distInfo>
<dataIdInfo>
<idPurp>This dataset contains polygons representing planimetric runway, taxiway, apron, airport perimeter, or helipad, created as part of the DC Geographic Information System (DC GIS) for the Office of the Chief Technology Officer (OCTO). These features were originally captured in 2015 and updated in 2017, 2019, 2021, 2023 and 2025</idPurp>
<idAbs>&lt;DIV STYLE="text-align:Left;"&gt;&lt;DIV&gt;&lt;DIV&gt;&lt;P&gt;&lt;SPAN&gt;Taxiway, Apron: Delineate footprint of the following features. A taxiway connects aircraft to other areas and facilities of an airport. The apron is an area of an airport where aircraft are parked, unloaded or loaded, refueled, or boarded. Airport/Heliport Perimeter: Delineate the full perimeter of the airport or heliport. Helipad: Delineate clearly marked hard surface landing area or platform for helicopters.&lt;/SPAN&gt;&lt;/P&gt;&lt;/DIV&gt;&lt;/DIV&gt;&lt;/DIV&gt;</idAbs>
<idCredit>Office of the Chief of Technology Officer</idCredit>
<idCitation>
<resTitle>Airports and Helipads</resTitle>
<date>
<pubDate>2026-02-06T00:00:00</pubDate>
</date>
<presForm>
<PresFormCd value="005"/>
</presForm>
<presForm>
<fgdcGeoform>vector digital data</fgdcGeoform>
</presForm>
<citRespParty>
<rpOrgName>Office of the Chief Technology Officer</rpOrgName>
<rpPosName>GIS Data Coordinator</rpPosName>
<role>
<RoleCd value="007"/>
</role>
<rpCntInfo>
<cntAddress addressType="both">
<delPoint>200 I Street SE, 5th Floor</delPoint>
<city>Washington</city>
<adminArea>DC</adminArea>
<postCode>20003</postCode>
<eMailAdd>dcgis@dc.gov</eMailAdd>
<country>US</country>
</cntAddress>
<cntPhone>
<voiceNum tddtty="">(202) 727-2277</voiceNum>
<faxNum>(202) 727-6857</faxNum>
</cntPhone>
<cntHours>8:30 am - 5 pm</cntHours>
</rpCntInfo>
<displayName>Office of the Chief Technology Officer</displayName>
</citRespParty>
</idCitation>
<searchKeys>
<keyword>airports</keyword>
<keyword>air space</keyword>
<keyword>aviation</keyword>
<keyword>basemap</keyword>
<keyword>District of Columbia</keyword>
<keyword>flight</keyword>
<keyword>heliports</keyword>
<keyword>OCTO</keyword>
<keyword>planimetrics</keyword>
<keyword>runway</keyword>
<keyword>taxiway</keyword>
<keyword>transportation</keyword>
<keyword>Washington DC</keyword>
<keyword>dc</keyword>
<keyword>currentplanimetric</keyword>
</searchKeys>
<resConst>
<Consts>
<useLimit>&lt;DIV STYLE="text-align:Left;"&gt;&lt;DIV&gt;&lt;DIV&gt;&lt;P&gt;&lt;SPAN&gt;This work is licensed under a &lt;/SPAN&gt;&lt;A href="https://creativecommons.org:443/licenses/by/4.0/" STYLE="text-decoration:underline;"&gt;&lt;SPAN&gt;Creative Commons Attribution 4.0 International License&lt;/SPAN&gt;&lt;/A&gt;&lt;SPAN&gt;.&lt;/SPAN&gt;&lt;/P&gt;&lt;/DIV&gt;&lt;/DIV&gt;&lt;/DIV&gt;</useLimit>
</Consts>
</resConst>
<dataExt>
<exDesc>ground condition</exDesc>
<tempEle>
<TempExtent>
<exTemp>
<TM_Instant>
<tmPosition>2025-03-27T00:00:00</tmPosition>
</TM_Instant>
</exTemp>
</TempExtent>
</tempEle>
</dataExt>
<themeKeys>
<thesaName>
<resTitle>ISO 19115 Topic Categories</resTitle>
</thesaName>
<keyword>transportation</keyword>
<keyword>imageryBaseMapsEarthCover</keyword>
</themeKeys>
<placeKeys>
<keyword>District of Columbia</keyword>
<keyword>Washington DC</keyword>
</placeKeys>
<dataChar>
<CharSetCd value="004"/>
</dataChar>
<spatRpType>
<SpatRepTypCd value="001"/>
</spatRpType>
<envirDesc>Esri ArcGIS 13.0.3.36057</envirDesc>
<idStatus>
<ProgCd value="001"/>
</idStatus>
<idPoC>
<rpOrgName>Office of the Chief Technology Officer</rpOrgName>
<rpPosName>GIS Data Coordinator</rpPosName>
<role>
<RoleCd value="007"/>
</role>
<rpCntInfo>
<cntAddress addressType="both">
<delPoint>200 I Street SE, 5th Floor</delPoint>
<city>Washington</city>
<adminArea>DC</adminArea>
<postCode>20003</postCode>
<eMailAdd>dcgis@dc.gov</eMailAdd>
<country>US</country>
</cntAddress>
<cntPhone>
<voiceNum tddtty="">(202) 727-2277</voiceNum>
<faxNum>(202) 727-6857</faxNum>
</cntPhone>
<cntHours>8:30 am - 5 pm</cntHours>
</rpCntInfo>
</idPoC>
<resConst>
<LegConsts>
<useLimit>See access and use constraints information.</useLimit>
</LegConsts>
</resConst>
<dataLang>
<languageCode value="eng"/>
<countryCode Sync="TRUE" value="USA"/>
</dataLang>
<dataExt>
<geoEle>
<GeoBndBox esriExtentType="search">
<westBL>-77.13</westBL>
<eastBL>-76.9</eastBL>
<northBL>39.01</northBL>
<southBL>38.78</southBL>
<exTypeCode>1</exTypeCode>
</GeoBndBox>
</geoEle>
<exDesc>Washington DC</exDesc>
</dataExt>
<tpCat>
<TopicCatCd value="010"/>
</tpCat>
<tpCat>
<TopicCatCd value="018"/>
</tpCat>
</dataIdInfo>
<dqInfo>
<dqScope>
<scpLvl>
<ScopeCd value="005"/>
</scpLvl>
</dqScope>
<dataLineage>
<prcStep>
<stepDesc>All planimetric data within the scope of the 2015 project was newly collected by Sanborn using DAT/EM Summit Evolution digital photogrammetric workstations, with the exception of StreetCenterlineLn_2015 (street centerlines) and GeoControlPt_2015 (ground control.) The photogrammetric supervisor established the data collection conventions to be used for data capture, including the data schema, global origin and working units to be used for data collection. The vendor assigned collection areas to stereo-compilation technicians based on OCTO’s orthophoto tile layout. They collected and saved planimetric data to the designated network subdirectory.
After the data for the tile was collected, the technician visually reviewed the planimetric information for completeness and accuracy. The data was then passed on to GIS staff.
GIS staff performed a preliminary review of the planimetric data. Omissions or errors that were found were communicated to stereo-compilation staff, who then updated the corresponding stereo-compilation file. The corrected data was then passed on to GIS staff.
GIS staff then merged all data per delivery block. Polyline features that were required by OCTO not to have pseudo nodes were dissolved. Following the dissolve, all point and polyline features were appended to a template geodatabase in their respective feature classes and attributed as defined in OCTO’s Data Dictionary.
Polylines that participated in building polygons were placed into a working dataset, and topology built to locate gaps in the lines where polygons would not properly build. A technician closed those gaps. Then, polygons were built from these polylines in a working feature class. Based on centroids collected during the stereo-compilation process, polygons were then assigned their appropriate feature code based on OCTO’s Data Dictionary. Once all polygons were assigned their feature codes based on their corresponding centroid codes, the polygons remaining were then checked against the 2015 orthophoto imagery. Any unclassified polygons that were erroneously not given a feature code (because the stereo-compiler omitted a centroid that was not caught in a previous review) were then coded with the proper feature code. Also, at this point an additional review for proper code was performed, and incorrect codes changed to correct codes. Then, all remaining un-coded polygons were removed from the working polygon feature class.
Polygons for each feature class were selected from the working feature class and appended to their appropriate feature classes based on OCTO’s Data Dictionary specifications.
Once all features were put into their proper location in the geodatabase and attribution populated, a topology was established to locate geometry errors. GIS technicians corrected errors then removed the topology from the geodatabase. The geodatabase was then compacted.
There are two isolated pockets of data that were not collected by Sanborn in the 2015 project, which are located around the White House and Capitol. Much of these two pockets have no 2015 stereo-photo coverage because the flying height required to collect imagery suitable for 3” pixel resolution orthophotos was too low relative to the no-fly zones over these areas. To avoid splitting a large number of planimetric features between differing imagery dates, the stereo-imagery voids were generally expanded to the center of the closest street (coincident with street centerlines where possible) to produce the final void areas. Inside these voids in the 2015 data, OCTO’s existing planimetrics (updated in 2013) were appended to the 2015 data for all feature classes except BarrierLn and CurbLn.</stepDesc>
<stepDateTm>2016-03-28T00:00:00</stepDateTm>
</prcStep>
<prcStep>
<stepDesc>This process describes 2017 updates to planimetric data originally captured in 2015.
The planimetric dataset provided by DC OCTO on 5/22/2017 was used as the base dataset for update by Fugro. Following the Aerotriangulation of the imagery, stereo images were generated for the planimetric compilation to allow for full view of features that could be obscured by building lean in a 2D environment. Relative and absolute orientation for the stereo images will be achieved by importing the orientation parameters from the AT results. The planimetrics were collected using MicroStation and KLT Atlas software packages and combined for final QC in ArcGIS in the final geodatabase format. Prior to the initiation of compilation, a data capture matrix was established based on the data dictionary and compilation guidelines provided by DC OCTO. Requirements for the 2017 planimetric collect included the addition of a feature class for features associated with airports called AirPly, crosswalks as a new feature to the sidewalk layer, and a complete recollection of data in areas around the White House and Capitol that was compiled in 2013 but not captured in the 2015 collect. Topology checks were run using the OCTO provided rule set. When running topology, flags were identified on the existing 2015 dataset and this topology check was submitted with the updated 2017 collect. Additionally, the inclusion of crosswalks in the sidewalk feature class has created flags in the topology due to overlapping with roads. A separate geodatabase was generated to run the topology check (DC_Planimetrics2017_TopologyChks.gdb) and temporary sets of all feature classes with deleted data were generated. The deleted data was removed in the temporary feature classes to reduce the number of false errors that had to be reviewed. Due to the large number of exceptions in the 2015 data for curbs that were not covered by roads, the 2015 exceptions were identified and excluded from the current review. This working topology dataset was used as a guide to make corrections to the final deliverable dataset (DC_Planimetrics2017.gdb). Both the working topology geodatabase and the final deliverable geodatabase were submitted to DC.
</stepDesc>
<stepDateTm>2017-05-22T00:00:00</stepDateTm>
<stepProc>
<rpOrgName>Fugro Geospatial, Inc.</rpOrgName>
<rpCntInfo>
<cntAddress addressType="both">
<delPoint>7320 Executive Way</delPoint>
<city>Frederick</city>
<adminArea>MD</adminArea>
<postCode>21704</postCode>
<eMailAdd>metadata@earthdata.com</eMailAdd>
<country>US</country>
</cntAddress>
<cntPhone>
<voiceNum tddtty="">(301)948-8550</voiceNum>
<faxNum>(301)963-2064</faxNum>
</cntPhone>
</rpCntInfo>
<displayName>Fugro Geospatial, Inc.</displayName>
<displayName>Fugro Geospatial, Inc.</displayName>
<role>
<RoleCd value="009"/>
</role>
</stepProc>
</prcStep>
<prcStep>
<stepDesc>2019 Planimetric Data Capture Update
Original data was captured in 2015 and updated in 2017 and 2019. Digital planimetric mapping was collected in strict accordance with the feature types and formats specified in the RFP. The planimetric information was collected using SSK and KLT Atlas workstations. Quality control (QC) and editing tasks were performed in the MicroStation environment with a final review in ArcGIS. Production workflow was designed specifically to maintain the 3D elements and topology of the planimetric mapping once data is migrated to the ESRI personal geodatabase environment keeping the needed attribute information. Draping was done on the data to view in stereo. Topology checks were run using the OCTO provided rule set.</stepDesc>
<stepDateTm>2019-04-23T00:00:00</stepDateTm>
<stepProc>
<rpOrgName>Fugro Geospatial, Inc.</rpOrgName>
<rpCntInfo>
<cntAddress addressType="both">
<delPoint>7320 Executive Way</delPoint>
<city>Frederick</city>
<adminArea>MD</adminArea>
<postCode>21704</postCode>
<eMailAdd>metadata@earthdata.com</eMailAdd>
<country>US</country>
</cntAddress>
<cntPhone>
<voiceNum tddtty="">(301)948-8550</voiceNum>
<faxNum>(301)963-2064</faxNum>
</cntPhone>
</rpCntInfo>
<displayName>Fugro Geospatial, Inc.</displayName>
<displayName>Fugro Geospatial, Inc.</displayName>
<role>
<RoleCd value="009"/>
</role>
</stepProc>
</prcStep>
<prcStep>
<stepDesc>2021 Planimetric Data Capture Update
The planimetric dataset provided by DC OCTO on 6/15/2021 was used as the base dataset for update by Fugro. Following the Aerotriangulation of the imagery, stereo images were generated for the planimetric compilation to allow for full view of features that could be obscured by building lean in a 2D environment. Relative and absolute orientation for the stereo images will be achieved by importing the orientation parameters from the AT results.
The planimetrics were collected using MicroStation and KLT Atlas software packages and combined for final QC in ArcGIS in the final geodatabase format. Prior to the initiation of compilation, a data capture matrix was established based on the data dictionary and compilation guidelines provided by DC OCTO.
Topology checks were run using the OCTO provided rule set. When running topology, flags were identified on the existing 2019 dataset and this topology check was submitted with the updated 2021 collect.</stepDesc>
<stepDateTm>2021-03-11T00:00:00</stepDateTm>
<stepProc>
<rpOrgName>Fugro Geospatial, Inc.</rpOrgName>
<rpCntInfo>
<cntAddress addressType="both">
<delPoint>7320 Executive Way</delPoint>
<city>Frederick</city>
<adminArea>MD</adminArea>
<postCode>21704</postCode>
<eMailAdd>metadata@earthdata.com</eMailAdd>
<country>US</country>
</cntAddress>
<cntPhone>
<voiceNum tddtty="">(301)948-8550</voiceNum>
<faxNum>(301)963-2064</faxNum>
</cntPhone>
</rpCntInfo>
<displayName>Fugro Geospatial, Inc.</displayName>
<displayName>Fugro Geospatial, Inc.</displayName>
<role>
<RoleCd value="009"/>
</role>
</stepProc>
</prcStep>
<prcStep>
<stepDesc>2023 Planimetric Data Capture Update
Digital planimetric mapping was collected in strict accordance with the feature types and formats specified in the RFP. Fugro captured planimetric information using SSK and KLT Atlas workstations. Quality control (QC) and editing tasks are performed in the MicroStation environment with a final review in ArcGIS. Fugro has a proven production workflow that was designed specifically to maintain the 3D elements and topology of the planimetric mapping once data is migrated to the ESRI personal geodatabase environment keeping the needed attribute information. Draping was done on the data to view in stereo, the data was delivered in 2D. Features updated are AIRPLY, BARRIERLN, BLDGPLY, BRGTUNPLY, CURBLN, GEOCONTROLPT, GRATEPT, HYDROLN, OBSAREAPLY, RAILRDLN, RECAREAPLY, ROADPLY, SIDEWALKPLY, ROADWAYCENTERLINELN, SWMPOOLPLY, and WATERPLY. This data went through a pilot and final QA/QC protocol which ensured that the topology was checked and amended if necessary.</stepDesc>
<stepDateTm>2023-03-31T00:00:00</stepDateTm>
<stepProc>
<rpOrgName>Fugro Geospatial, Inc.</rpOrgName>
<rpCntInfo>
<cntAddress addressType="both">
<delPoint>7320 Executive Way</delPoint>
<city>Frederick</city>
<adminArea>MD</adminArea>
<postCode>21704</postCode>
<eMailAdd>metadata@earthdata.com</eMailAdd>
<country>US</country>
</cntAddress>
<cntPhone>
<voiceNum tddtty="">(301)948-8550</voiceNum>
<faxNum>(301)963-2064</faxNum>
</cntPhone>
</rpCntInfo>
<displayName>Fugro Geospatial, Inc.</displayName>
<displayName>Fugro Geospatial, Inc.</displayName>
<role>
<RoleCd value="009"/>
</role>
</stepProc>
</prcStep>
<prcStep>
<stepDesc>2025 Planimetric Data Capture Update
Digital planimetric mapping was collected in strict accordance with the feature types and formats specified in the RFP. Fugro captured planimetric information using SSK and KLT Atlas workstations. Quality control (QC) and editing tasks are performed in the MicroStation environment with a final review in ArcGIS. Fugro has a proven production workflow that was designed specifically to maintain the 3D elements and topology of the planimetric mapping once data is migrated to the ESRI personal geodatabase environment keeping the needed attribute information. Draping was done on the data to view in stereo, the data was delivered in 2D. Features updated are AIRPLY, BARRIERLN, BLDGPLY, BRGTUNPLY, CURBLN, GEOCONTROLPT, GRATEPT, HYDROLN, OBSAREAPLY, RAILRDLN, RECAREAPLY, ROADPLY, SIDEWALKPLY, ROADWAYCENTERLINELN, SWMPOOLPLY, and WATERPLY. This data went through a pilot and final QA/QC protocol which ensured that the topology was checked and amended if necessary.</stepDesc>
<stepDateTm>2025-03-27T00:00:00</stepDateTm>
<stepProc>
<rpOrgName>Fugro Geospatial, Inc.</rpOrgName>
<rpCntInfo>
<cntAddress addressType="both">
<delPoint>7320 Executive Way</delPoint>
<city>Frederick</city>
<adminArea>MD</adminArea>
<postCode>21704</postCode>
<eMailAdd>metadata@earthdata.com</eMailAdd>
<country>US</country>
</cntAddress>
<cntPhone>
<voiceNum tddtty="">(301)948-8550</voiceNum>
<faxNum>(301)963-2064</faxNum>
</cntPhone>
</rpCntInfo>
<displayName>Fugro Geospatial, Inc.</displayName>
<displayName>Fugro Geospatial, Inc.</displayName>
<role>
<RoleCd value="009"/>
</role>
</stepProc>
</prcStep>
</dataLineage>
<report dimension="" type="DQConcConsis">
<measDesc>This report describes data originally captured in 2015. OCTO developed and operated a QA/QC program to check the deliverables. Generally, the program consists of various types of processes grouped into visual checks, automated procedures, edge-matching routines, specialized checks, and field verification. Through the application of these processes, the data's spatial and attribute accuracy, usability, data documentation adherence, and specialized characteristics are checked. Staff identified issues in a shapfile with appropriate descriptions for the vendor to fix. The data was delivered in preliminary format for a thorough review and identification of issues. The vendor fixed the data and delivered final data which OCTO checked to ensure the vendor made the fixes appropriately.</measDesc>
</report>
<report dimension="" type="DQCompOm">
<measDesc>Building structures include parking garages, ruins, monuments, and buildings under construction along with residential, commercial, industrial, apartment, townhouses, duplex, etc. Buildings equal to or larger than 9.29 sq m (100 sq feet) will be captured. Firewalls or roof breaks will be digitized to show individual adjacent structures within them, when it can be determined that it is a separate unit, for apartments, townhouses, and duplexes. If there is any uncertainty about individual units, no firewall or roof break will be shown. All buildings must be compiled as complete polygons and squared accordingly. No other feature can make a side for a building. Legacy data in areas without change will not be updated.
For CAPTUREACTION, if a building is new it will be coded as ‘Add’, if the feature changes shape due to renovations it will be coded as ‘Update’, and if it no longer exists it will be coded as ‘Delete’, but the feature will not be deleted. All existing features at the beginning of the project will be populated with ‘Existing’; if a feature is not modified or deleted it will keep the ‘Existing’ value.
Building: Delineate around roof line showing the building "footprint." Roof breaks and rooflines, such as between individual residences in row houses or separate spaces in office structures, will be captured to partition building footprints. This includes capturing all sheds, garages, or other non-addressable buildings over 100 square feet throughout the city. Atriums, courtyards, and other “holes” in buildings created as part of demarcating the building outline will not be part of the building capture. This includes construction trailers greater than 100 square feet.
As a guide, use the ownerply lot lines to assist in delineating roof breaks for those buildings where visual identification is difficult. This layer should be relied on heavily outside the downtown areas to capture roofbreaks. Within the downtown area, ownerply will serve as a guide for areas where roofbreak delineation is not clear. Aerial photography will be used as the primary source.
Memorials: Delineate around roof line showing the building "footprint." A list of memorials will be provided for capture and coding. DC GIS will provide a list of memorials to use as the source.
Bleachers: Delineate around the base of connected sets of bleachers.
Parking Garage: Capture this multi-story structure for parking as a parking garage. Delineate the perimeter of the parking garage including ramps. Parking garages sharing a common boundary with linear features must have the common segment captured once. A parking garage will only be attributes as such if there is rooftop parking. Not all rooftop parking is a parking garage, however. There are structures that only have rooftop parking but serve as a business. Those should be captured as buildings.
Fountains: Delineate around the base of fountain structures.
Canopy Structures: Delineate around the base free standing canopy structures such as solar panels and gas station pump canopies</measDesc>
</report>
</dqInfo>
<spatRepInfo>
<VectSpatRep>
<geometObjs Name="AirPly">
<geoObjTyp>
<GeoObjTypCd Sync="TRUE" value="002"/>
</geoObjTyp>
<geoObjCnt Sync="TRUE">17</geoObjCnt>
</geometObjs>
<topLvl>
<TopoLevCd Sync="TRUE" value="001"/>
</topLvl>
</VectSpatRep>
</spatRepInfo>
<refSysInfo>
<RefSystem>
<refSysID>
<identCode Sync="TRUE" code="26985"/>
<idCodeSpace Sync="TRUE">EPSG</idCodeSpace>
<idVersion Sync="TRUE">4.5(3.0.1)</idVersion>
</refSysID>
</RefSystem>
</refSysInfo>
<eainfo>
<detailed Name="AirPly">
<enttyp>
<enttypl>DCGIS.AirPly</enttypl>
<enttypt Sync="TRUE">Feature Class</enttypt>
<enttypc Sync="TRUE">17</enttypc>
</enttyp>
<attr>
<attrlabl Sync="TRUE">OBJECTID</attrlabl>
<attalias Sync="TRUE">OBJECTID</attalias>
<attrtype Sync="TRUE">OID</attrtype>
<attwidth Sync="TRUE">4</attwidth>
<atprecis Sync="TRUE">10</atprecis>
<attscale Sync="TRUE">0</attscale>
<attrdef Sync="TRUE">Internal feature number.</attrdef>
<attrdefs Sync="TRUE">Esri</attrdefs>
<attrdomv>
<udom Sync="TRUE">Sequential unique whole numbers that are automatically generated.</udom>
</attrdomv>
</attr>
<attr>
<attrlabl>FEATURECODE</attrlabl>
<attalias>Feature Code</attalias>
<attrdef>Feature Code</attrdef>
<attrdefs>OCTO</attrdefs>
<attrtype>shortinteger</attrtype>
<attwidth>6</attwidth>
<attrdomv>
<edom>
<edomv>1210</edomv>
<edomvd>TAXIWAY,APRON</edomvd>
<edomvds>OCTO</edomvds>
</edom>
<edom>
<edomv>1220</edomv>
<edomvd>AIRPORT,HELIPORT PERIMETER</edomvd>
<edomvds>OCTO</edomvds>
</edom>
<edom>
<edomv>1230</edomv>
<edomvd>HELIPAD</edomvd>
<edomvds>OCTO</edomvds>
</edom>
</attrdomv>
<atprecis Sync="TRUE">5</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>DESCRIPTION</attrlabl>
<attalias>Description</attalias>
<attrdef>Description</attrdef>
<attrdefs>OCTO</attrdefs>
<attrtype>string</attrtype>
<attwidth>50</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>CAPTUREYEAR</attrlabl>
<attalias>Capture Year</attalias>
<attrdef>Capture Year</attrdef>
<attrdefs>OCTO</attrdefs>
<attrtype>date</attrtype>
<attwidth Sync="TRUE">8</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>CAPTUREACTION</attrlabl>
<attalias>Capture Action</attalias>
<attrdef>Capture Action</attrdef>
<attrdefs>OCTO</attrdefs>
<attrtype>string</attrtype>
<attwidth>1</attwidth>
<attrdomv>
<edom>
<edomv>A</edomv>
<edomvd>Add</edomvd>
<edomvds>OCTO</edomvds>
</edom>
<edom>
<edomv>D</edomv>
<edomvd>Delete</edomvd>
<edomvds>OCTO</edomvds>
</edom>
<edom>
<edomv>U</edomv>
<edomvd>Update</edomvd>
<edomvds>OCTO</edomvds>
</edom>
<edom>
<edomv>E</edomv>
<edomvd>Existing</edomvd>
<edomvds>OCTO</edomvds>
</edom>
</attrdomv>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl Sync="TRUE">SE_ANNO_CAD_DATA</attrlabl>
<attalias Sync="TRUE">SE_ANNO_CAD_DATA</attalias>
<attrtype Sync="TRUE">Blob</attrtype>
<attwidth Sync="TRUE">0</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl Sync="TRUE">GLOBALID</attrlabl>
<attalias Sync="TRUE">GLOBALID</attalias>
<attrtype Sync="TRUE">GlobalID</attrtype>
<attwidth Sync="TRUE">38</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl Sync="TRUE">SHAPE</attrlabl>
<attalias Sync="TRUE">Shape</attalias>
<attrtype Sync="TRUE">Geometry</attrtype>
<attwidth Sync="TRUE">8</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
<attrdef Sync="TRUE">Feature geometry.</attrdef>
<attrdefs Sync="TRUE">Esri</attrdefs>
<attrdomv>
<udom Sync="TRUE">Coordinates defining the features.</udom>
</attrdomv>
</attr>
<attr>
<attrlabl Sync="TRUE">SHAPE.AREA</attrlabl>
<attalias Sync="TRUE">SHAPE.AREA</attalias>
<attrtype Sync="TRUE">Double</attrtype>
<attwidth Sync="TRUE">0</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl Sync="TRUE">SHAPE.LEN</attrlabl>
<attalias Sync="TRUE">SHAPE.LEN</attalias>
<attrtype Sync="TRUE">Double</attrtype>
<attwidth Sync="TRUE">0</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
</detailed>
</eainfo>
<spdoinfo>
<ptvctinf>
<esriterm Name="AirPly">
<efeatyp Sync="TRUE">Simple</efeatyp>
<efeageom Sync="TRUE" code="4"/>
<esritopo Sync="TRUE">FALSE</esritopo>
<efeacnt Sync="TRUE">17</efeacnt>
<spindex Sync="TRUE">TRUE</spindex>
<linrefer Sync="TRUE">FALSE</linrefer>
</esriterm>
</ptvctinf>
</spdoinfo>
</metadata>
