<?xml version="1.0" encoding="UTF-8" standalone="no"?>
<metadata>
<idinfo>
<citation>
<citeinfo>
<origin>Oak Ridge National Laboratory</origin>
<pubdate>20211222</pubdate>
<title>PR_Structures</title>
<geoform>vector digital data</geoform>
<lworkcit>
<citeinfo>
<origin>Federal Emergency Management Agency FEMA</origin>
<pubdate>20211222</pubdate>
<title>USA Structure Inventory</title>
<geoform>GIS Data Project/Collection</geoform>
</citeinfo>
</lworkcit>
</citeinfo>
</citation>
<descript>
<abstract>This feature class contains structure (building) polygons for the state/territory of Puerto Rico. This update is provided with improved feature quality, greater temporal relevancy, and/or more complete attribution, where available. The structures (buildings) are represented by polygon geometries with an attribute table described elsewhere in the metadata.</abstract>
<purpose>This dataset was created to inventory all structures in the US and its territories whose size is greater than 450 square feet. It provides cartographic context for urban density, patterns of use, visual reference, and navigation support. This dataset does not meet National Map Accuracy standards (https://pubs.usgs.gov/fs/1999/0171/report.pdf) and has limited cartographic use at scales larger than 1:24,000.</purpose>
<supplinf>This dataset is provided to the U.S. Geological Survey (USGS) as a cartographic enhancement to The National Map products and services. The USGS will use this dataset to provide a structures tint rather than to define the shape of individual buildings.</supplinf>
</descript>
<timeperd>
<timeinfo>
<rngdates>
<begdate>20111023</begdate>
<enddate>20190108</enddate>
</rngdates>
</timeinfo>
<current>Time period date range corresponds to the IM_DATE field of the feature class.</current>
</timeperd>
<status>
<progress>Complete</progress>
<update>As Needed</update>
</status>
<spdom>
<bounding>
<westbc>-67.946727726</westbc>
<eastbc>-65.244564054</eastbc>
<northbc>18.515155856</northbc>
<southbc>17.885877645</southbc>
</bounding>
</spdom>
<keywords>
<theme>
<themekt>None</themekt>
<themekey>homeland security</themekey>
<themekey>homeland defense</themekey>
<themekey>emergency response</themekey>
<themekey>structures</themekey>
<themekey>building outlines</themekey>
<themekey>USA structures</themekey>
</theme>
<place>
<placekt>None</placekt>
<placekey>United States and Territories</placekey>
<placekey>USA</placekey>
<placekey>Puerto Rico</placekey>
</place>
</keywords>
<accconst>None</accconst>
<useconst>None - dataset contains no personally identifiable information</useconst>
<ptcontac>
<cntinfo>
<cntorgp>
<cntorg>Federal Emergency Management Agency – Response Geospatial Office</cntorg>
</cntorgp>
<cntaddr>
<addrtype>Mailing and Physical</addrtype>
<address>500 C St SW</address>
<city>Washington DC</city>
<state>DC</state>
<postal>20024</postal>
<country>United States</country>
</cntaddr>
<cntvoice>202-341-1426</cntvoice>
</cntinfo>
</ptcontac>
<ptcontac>
<cntinfo>
<cntorgp>
<cntorg>Oak Ridge National Laboratory</cntorg>
</cntorgp>
<cntaddr>
<addrtype>Mailing and Physical</addrtype>
<address>One Bethel Valley Rd, MS-6017</address>
<city>Oak Ridge</city>
<state>TN</state>
<postal>37831</postal>
<country>United States</country>
</cntaddr>
<cntvoice>865-341-0013</cntvoice>
<cntfax>865-241-6261</cntfax>
</cntinfo>
</ptcontac>
<datacred>Oak Ridge National Laboratory (ORNL); Federal Emergency Management Agency (FEMA) Geospatial Response Office</datacred>
<native>Version 6.2 (Build 9200) ; Esri ArcGIS 10.5.1.7333</native>
</idinfo>
<dataqual>
<attracc>
<attraccr>No formal attribute accuracy test was conducted. Data from the authoritative sources are assumed to be correct and accurate.</attraccr>
</attracc>
<logic>No formal logical consistency tests were conducted.</logic>
<complete>No formal completeness tests were conducted; however, data capture is complete as of the most recent date indicated in the Time Period section.</complete>
<posacc>
<horizpa>
<horizpar>None; however, the horizontal positional accuracy of derived features is directly correlated to the accuracy of the imagery used to extract the feature. WorldView-2 and WorldView-3 sensors have a reported geolocation accuracy of less than 3.5 meters. NAIP reports a horizontal accuracy of at least 5 meters within a 1 meter ground sample distance.</horizpar>
</horizpa>
<vertacc>
<vertaccr>None; however, the vertical positional accuracy correlates to the accuracy of LiDAR and other elevation sources used to derive vertical information.</vertaccr>
</vertacc>
</posacc>
<lineage>
<srcinfo>
<srccite>
<citeinfo>
<origin>National Geospatial-Intelligence Agency</origin>
<pubdate>20160101</pubdate>
<title>Building Footprints</title>
</citeinfo>
</srccite>
<typesrc>vector digital data</typesrc>
<srctime>
<timeinfo>
<rngdates>
<begdate>20111023</begdate>
<enddate>20111023</enddate>
</rngdates>
</timeinfo>
<srccurr>Observed</srccurr>
</srctime>
<srccitea>133 Cities</srccitea>
<srccontr>Geometries and height information were included</srccontr>
</srcinfo>
<srcinfo>
<srccite>
<citeinfo>
<origin>Maxar</origin>
<pubdate>20080906</pubdate>
<title>GeoEye-1</title>
</citeinfo>
</srccite>
<typesrc>remote-sensing image</typesrc>
<srctime>
<timeinfo>
<rngdates>
<begdate>20170926</begdate>
<enddate>20180206</enddate>
</rngdates>
</timeinfo>
<srccurr>Observed</srccurr>
</srctime>
<srccitea>GE01</srccitea>
<srccontr>Input Imagery from which features were extracted</srccontr>
</srcinfo>
<srcinfo>
<srccite>
<citeinfo>
<origin>Maxar</origin>
<pubdate>20140813</pubdate>
<title>WorldView-3</title>
</citeinfo>
</srccite>
<typesrc>remote-sensing image</typesrc>
<srctime>
<timeinfo>
<rngdates>
<begdate>20171021</begdate>
<enddate>20181120</enddate>
</rngdates>
</timeinfo>
<srccurr>Observed</srccurr>
</srctime>
<srccitea>WV03</srccitea>
<srccontr>Input Imagery from which features were extracted</srccontr>
</srcinfo>
<srcinfo>
<srccite>
<citeinfo>
<origin>Maxar</origin>
<pubdate>20091108</pubdate>
<title>WorldView-2</title>
</citeinfo>
</srccite>
<typesrc>remote-sensing image</typesrc>
<srctime>
<timeinfo>
<rngdates>
<begdate>20170924</begdate>
<enddate>20190108</enddate>
</rngdates>
</timeinfo>
<srccurr>Observed</srccurr>
</srctime>
<srccitea>WV02</srccitea>
<srccontr>Input Imagery from which features were extracted</srccontr>
</srcinfo>
<srcinfo>
<srccite>
<citeinfo>
<origin>U.S. Census Bureau</origin>
<pubdate>20211222</pubdate>
<title>TIGER/Line Shapefiles</title>
</citeinfo>
</srccite>
<typesrc>vector digital data</typesrc>
<srctime>
<timeinfo>
<rngdates>
<begdate>20210201</begdate>
<enddate>20210201</enddate>
</rngdates>
</timeinfo>
<srccurr>publication date</srccurr>
</srctime>
<srccitea>Census tracts</srccitea>
<srccontr>GEOID and FIPS included via spatial join</srccontr>
</srcinfo>
<procstep>
<procdesc>Scalable High-Resolution Imagery-Based Building Extraction Pipeline (SCRIBE): High-resolution multispectral imagery is obtained for the area of interest. The raw imagery (Level-1B product) is then pan-sharpened and orthorectified. Complete coverage with minimal cloud cover includes overhead imagery and LiDAR-derived footprints with a spatial resolution less than 0.7 meters. Once imagery pre-processing completes, high performance computing (HPC) environments at ORNL are used to apply a convolutional neural network (CNN) model to the imagery to automatically extract structure boundaries. </procdesc>
<procdate>20180627</procdate>
</procstep>
<procstep>
<procdesc>Verification and Validation Model (VVM): Verification and validation of the output produced from SCRIBE is conducted by a machine learning model to remove potential false positives. </procdesc>
<procdate>20190530</procdate>
</procstep>
<procstep>
<procdesc>Regularization: The visual representation of the structures has been improved to represent structure geometry more accurately as compared to the imagery-derived raster representations from the SCRIBE pipeline. This step also reduces the number of vertices represented by a structure, thus reducing file size and improving render speeds.</procdesc>
<procdate>20190530</procdate>
</procstep>
<procstep>
<procdesc>Attribution and Metadata: Population of some attributes is incomplete and identified in the Entity and Attribute Information section of this metadata.</procdesc>
<procdate>20211222</procdate>
</procstep>
</lineage>
</dataqual>
<spdoinfo>
<direct>Vector</direct>
<ptvctinf>
<esriterm Name="PR_Structures">
<efeatyp Sync="TRUE">Simple</efeatyp>
<efeageom Sync="TRUE" code="4"/>
<esritopo Sync="TRUE">FALSE</esritopo>
<efeacnt Sync="TRUE">0</efeacnt>
<spindex Sync="TRUE">TRUE</spindex>
<linrefer Sync="TRUE">FALSE</linrefer>
</esriterm>
</ptvctinf>
</spdoinfo>
<spref>
<horizsys>
<geograph>
<latres>8.983152841195215e-009</latres>
<longres>8.983152841195215e-009</longres>
<geogunit>Decimal Degrees</geogunit>
</geograph>
<geodetic>
<horizdn>D WGS 1984</horizdn>
<ellips>WGS 1984</ellips>
<semiaxis>6378137.0</semiaxis>
<denflat>298.257223563</denflat>
</geodetic>
</horizsys>
</spref>
<eainfo>
<detailed Name="PR_Structures">
<enttyp>
<enttypl>PR_Structures</enttypl>
<enttypd>NA</enttypd>
<enttypds>NA</enttypds>
<enttypt Sync="TRUE">Feature Class</enttypt>
<enttypc Sync="TRUE">0</enttypc>
</enttyp>
<attr>
<attrlabl>OBJECTID</attrlabl>
<attrdef>Internal feature number.</attrdef>
<attrdefs>Esri</attrdefs>
<attrdomv>
<udom>Sequential unique whole numbers that are automatically generated.</udom>
</attrdomv>
<attalias Sync="TRUE">OBJECTID</attalias>
<attrtype Sync="TRUE">OID</attrtype>
<attwidth Sync="TRUE">4</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>Shape</attrlabl>
<attrdef>Feature geometry.</attrdef>
<attrdefs>Esri</attrdefs>
<attrdomv>
<udom>Coordinates defining the features.</udom>
</attrdomv>
<attalias Sync="TRUE">Shape</attalias>
<attrtype Sync="TRUE">Geometry</attrtype>
<attwidth Sync="TRUE">0</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>BUILD_ID</attrlabl>
<attrdef>Unique ID for each feature.</attrdef>
<attrdefs>Oak Ridge National Laboratory</attrdefs>
<attalias Sync="TRUE">BUILD_ID</attalias>
<attrtype Sync="TRUE">Integer</attrtype>
<attwidth Sync="TRUE">4</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>OCC_CLS</attrlabl>
<attrdef>This identifies the top level building occupancy class as defined by Locations: Building Occupancy Classification; FEMA Data Standard; July 31, 2018.</attrdef>
<attrdefs>NONE. NOT CURRENTLY POPULATED</attrdefs>
<attrdomv>
<codesetd>
<codesetn>Locations: Building Occupancy Classification; FEMA Data Standard; July 31, 2018</codesetn>
<codesets>Contact FEMA at 500 C Street SW, Washington, DC 20024, 202-341-1426</codesets>
</codesetd>
</attrdomv>
<attalias Sync="TRUE">OCC_CLS</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">20</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>PRIM_OCC</attrlabl>
<attrdef>This identifies the primary descriptor for a building's usage for each top level building occupancy class as defined by Locations: Building Occupancy Classification; FEMA Data Standard; July 31, 2018.</attrdef>
<attrdefs>NONE. NOT CURRENTLY POPULATED</attrdefs>
<attrdomv>
<codesetd>
<codesetn>Locations: Building Occupancy Classification; FEMA Data Standard; July 31, 2018</codesetn>
<codesets>Contact FEMA at 500 C Street SW, Washington, DC 20024, 202-341-1426</codesets>
</codesetd>
</attrdomv>
<attalias Sync="TRUE">PRIM_OCC</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">35</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>SEC_OCC</attrlabl>
<attrdef>This describes the range of units within Multi Family Dwelling and Temporary Lodging descriptors for Residential building occupancy class as defined by Locations: Building Occupancy Classification; FEMA Data Standard; July 31, 2018.</attrdef>
<attrdefs>NONE. NOT CURRENTLY POPULATED</attrdefs>
<attrdomv>
<codesetd>
<codesetn>Locations: Building Occupancy Classification; FEMA Data Standard; July 31, 2018</codesetn>
<codesets>Contact FEMA at 500 C Street SW, Washington, DC 20024, 202-341-1426</codesets>
</codesetd>
</attrdomv>
<attalias Sync="TRUE">SEC_OCC</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">13</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>PROP_ADDR</attrlabl>
<attrdef>Primary street address for a structure (i.e. 5th Avenue and Main Street).</attrdef>
<attrdefs>NONE. NOT CURRENTLY POPULATED</attrdefs>
<attalias Sync="TRUE">PROP_ADDR</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">80</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>PROP_CITY</attrlabl>
<attrdef>City name.</attrdef>
<attrdefs>NONE. NOT CURRENTLY POPULATED</attrdefs>
<attalias Sync="TRUE">PROP_CITY</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">50</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>PROP_ST</attrlabl>
<attrdef>State name.</attrdef>
<attrdefs>NONE. NOT CURRENTLY POPULATED</attrdefs>
<attalias Sync="TRUE">PROP_ST</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">50</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>PROP_ZIP</attrlabl>
<attrdef>Zip code (5 digit).</attrdef>
<attrdefs>NONE. NOT CURRENTLY POPULATED</attrdefs>
<attrdomv>
<codesetd>
<codesetn>US Postal Zip Codes</codesetn>
<codesets>United States Postal Service (https://www.usps.com)</codesets>
</codesetd>
</attrdomv>
<attalias Sync="TRUE">PROP_ZIP</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">50</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>OUTBLDG</attrlabl>
<attrdef>A non-primary structure or outbuilding such as a garage, shed or other accessory building.</attrdef>
<attrdefs>NONE. NOT CURRENTLY POPULATED</attrdefs>
<attalias Sync="TRUE">OUTBLDG</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">13</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>HEIGHT</attrlabl>
<attrdef>This is a measure of the height (in meters) of the structure as determined from LiDAR or other source data.</attrdef>
<attrdefs>LiDAR-derived footprints where available provided by NGA</attrdefs>
<attalias Sync="TRUE">HEIGHT</attalias>
<attrtype Sync="TRUE">Single</attrtype>
<attwidth Sync="TRUE">4</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>SQMETERS</attrlabl>
<attrdef>This is the two-dimensional area of the building in square meters. Field populated using PCS:USA_Contiguous_Albers_Equal_Area_Conic_USGS</attrdef>
<attrdefs>Oak Ridge National Laboratory</attrdefs>
<attalias Sync="TRUE">SQMETERS</attalias>
<attrtype Sync="TRUE">Single</attrtype>
<attwidth Sync="TRUE">4</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>SQFEET</attrlabl>
<attrdef>This is the two-dimensional area of the building in square feet. Field populated using PCS:USA_Contiguous_Albers_Equal_Area_Conic_USGS</attrdef>
<attrdefs>Oak Ridge National Laboratory</attrdefs>
<attalias Sync="TRUE">SQFEET</attalias>
<attrtype Sync="TRUE">Single</attrtype>
<attwidth Sync="TRUE">4</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>H_ADJ_ELEV</attrlabl>
<attrdef>This is the highest elevation (in meters) of the ground adjacent to the structure as estimated from available elevation data.</attrdef>
<attrdefs>NONE. NOT CURRENTLY POPULATED</attrdefs>
<attalias Sync="TRUE">H_ADJ_ELEV</attalias>
<attrtype Sync="TRUE">Single</attrtype>
<attwidth Sync="TRUE">4</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>L_ADJ_ELEV</attrlabl>
<attrdef>This is the lowest elevation (in meters) of the ground adjacent to the structure as estimated from available elevation data.</attrdef>
<attrdefs>NONE. NOT CURRENTLY POPULATED</attrdefs>
<attalias Sync="TRUE">L_ADJ_ELEV</attalias>
<attrtype Sync="TRUE">Single</attrtype>
<attwidth Sync="TRUE">4</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>FIPS</attrlabl>
<attrdef>US County Federal Information Processing Standards (FIPS) Code (5 digit).</attrdef>
<attrdefs>Oak Ridge National Laboratory</attrdefs>
<attrdomv>
<codesetd>
<codesetn>2020 FIPS Codes for Counties and County Equivalent Entities</codesetn>
<codesets>FIPS/Census (http://www.census.gov/geo/reference/codes/cou.html)</codesets>
</codesetd>
</attrdomv>
<attalias Sync="TRUE">FIPS</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">13</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>CENSUSCODE</attrlabl>
<attrdef>Census tract identifier; a concatenation of current state Federal Information Processing Series (FIPS) code, county FIPS code, and census tract code.</attrdef>
<attrdefs>Oak Ridge National Laboratory</attrdefs>
<attrdomv>
<codesetd>
<codesetn>United States Census Tracts 2020</codesetn>
<codesets>Census (https://www.census.gov/geo/reference/gtc/gtc_ct.html)</codesets>
</codesetd>
</attrdomv>
<attalias Sync="TRUE">CENSUSCODE</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">20</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>PROD_DATE</attrlabl>
<attrdef>The date that the structure/feature was captured using automated methods (MM/DD/YYYY).</attrdef>
<attrdefs>Oak Ridge National Laboratory</attrdefs>
<attalias Sync="TRUE">PROD_DATE</attalias>
<attrtype Sync="TRUE">Date</attrtype>
<attwidth Sync="TRUE">8</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>SOURCE</attrlabl>
<attrdef>This is the name of the contractor or the government agency that created the feature.</attrdef>
<attrdefs>Oak Ridge National Laboratory</attrdefs>
<attalias Sync="TRUE">SOURCE</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">50</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>USNG</attrlabl>
<attrdef>United States National Grid Coordinate.</attrdef>
<attrdefs>Oak Ridge National Laboratory</attrdefs>
<attalias Sync="TRUE">USNG</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">50</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>LONGITUDE</attrlabl>
<attrdef>Longitude of located point on centroid of structure in millionths of decimal degrees.</attrdef>
<attrdefs>Oak Ridge National Laboratory</attrdefs>
<attalias Sync="TRUE">LONGITUDE</attalias>
<attrtype Sync="TRUE">Double</attrtype>
<attwidth Sync="TRUE">8</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>LATITUDE</attrlabl>
<attrdef>Latitude of located point on centroid of structure in millionths of decimal degrees.</attrdef>
<attrdefs>Oak Ridge National Laboratory</attrdefs>
<attalias Sync="TRUE">LATITUDE</attalias>
<attrtype Sync="TRUE">Double</attrtype>
<attwidth Sync="TRUE">8</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>IMAGE_NAME</attrlabl>
<attrdef>The catalog ID from the Maxar commercial imagery, or the name of the image from National Agriculture Imagery Program (NAIP) imagery used to extract structures. LiDAR-derived footprints provided by the National Geospatial Intelligence Agency (NGA). For LiDAR-derived footprints, the first portion of the name ('LiXXX') denotes the Homeland Infrastructure Foundation-Level Data (HIFLD) production code while the latter portion is the city/project covered.</attrdef>
<attrdefs>Maxar, USDA, or NGA</attrdefs>
<attalias Sync="TRUE">IMAGE_NAME</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">50</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>IMAGE_DATE</attrlabl>
<attrdef>This is the date of the imagery or LiDAR from which the building outline was captured (MM/DD/YYYY).</attrdef>
<attrdefs>Maxar, USDA, or NGA</attrdefs>
<attalias Sync="TRUE">IMAGE_DATE</attalias>
<attrtype Sync="TRUE">Date</attrtype>
<attwidth Sync="TRUE">8</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>VAL_METHOD</attrlabl>
<attrdef>Methodology used to validate building outline as a true positive.</attrdef>
<attrdefs>Oak Ridge National Laboratory</attrdefs>
<attrdomv>
<edom>
<edomv>Manual</edomv>
<edomvd>A manual visual inspection using the image in IMAGE_NAME to validate building outline as a true positive.</edomvd>
<edomvds>Oak Ridge National Laboratory</edomvds>
</edom>
</attrdomv>
<attrdomv>
<edom>
<edomv>Automated</edomv>
<edomvd>Feature was evaluated by an algorithm. The algorithm generates probabilities representing the likelihood of each feature being a true positive. Features that have a 50% or higher chance of being a true positive are excluded from the review process and are assumed to be valid.</edomvd>
<edomvds>Oak Ridge National Laboratory</edomvds>
</edom>
</attrdomv>
<attrdomv>
<edom>
<edomv>Unverified</edomv>
<edomvd>Feature has not been formally reviewed.</edomvd>
<edomvds>Oak Ridge National Laboratory</edomvds>
</edom>
</attrdomv>
<attalias Sync="TRUE">VAL_METHOD</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">50</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>REMARKS</attrlabl>
<attrdef>This is comments that cannot be captured by existing data fields.</attrdef>
<attrdefs>Oak Ridge National Laboratory</attrdefs>
<attalias Sync="TRUE">REMARKS</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">500</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>UUID</attrlabl>
<attrdef>Universally Unique Identifier (method 4); a 128-bit id label coded in hexadecimal as a string in '{8-4-4-4-12}' format. Each structure within the complete USA Structures database will have a unique UUID. https://datatracker.ietf.org/doc/html/rfc4122.html</attrdef>
<attrdefs>Oak Ridge National Laboratory</attrdefs>
<attalias Sync="TRUE">UUID</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">50</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>Shape_Length</attrlabl>
<attrdef>Length of feature in internal units.</attrdef>
<attrdefs>Esri</attrdefs>
<attrdomv>
<udom>Positive real numbers that are automatically generated.</udom>
</attrdomv>
<attalias Sync="TRUE">Shape_Length</attalias>
<attrtype Sync="TRUE">Double</attrtype>
<attwidth Sync="TRUE">8</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>Shape_Area</attrlabl>
<attrdef>Area of feature in internal units squared.</attrdef>
<attrdefs>Esri</attrdefs>
<attrdomv>
<udom>Positive real numbers that are automatically generated.</udom>
</attrdomv>
<attalias Sync="TRUE">Shape_Area</attalias>
<attrtype Sync="TRUE">Double</attrtype>
<attwidth Sync="TRUE">8</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
</detailed>
</eainfo>
<distinfo>
<distrib>
<cntinfo>
<cntorgp>
<cntorg>U.S. Geological Survey, National Geospatial Technical Operations Center</cntorg>
</cntorgp>
<cntaddr>
<addrtype>Mailing and Physical</addrtype>
<address>1400 Independence Road</address>
<city>Rolla</city>
<state>MO</state>
<postal>65401</postal>
</cntaddr>
<cntaddr>
<addrtype>Mailing and Physical</addrtype>
<address>Box 25046 Denver Federal Center</address>
<city>Lakewood</city>
<state>CO</state>
<postal>80225</postal>
</cntaddr>
<cntvoice>1-888-ASK-USGS (1-888-275-8747)</cntvoice>
<cntemail>http://www.usgs.gov/ask/</cntemail>
<hours>Monday through Friday 8:00 AM to 4:00 PM</hours>
<cntinst>Metadata information can also be obtained through online services using The National Map Viewer, at http://nationalmap.usgs.gov or
EarthExplorer, at http://earthexplorer.usgs.gov or Ask USGS at http://www.usgs.gov/ask.</cntinst>
</cntinfo>
</distrib>
<resdesc>Downloadable Data</resdesc>
<distliab>No liability for content or accuracy is presumed by USGS for data.</distliab>
</distinfo>
<metainfo>
<metd>20211222</metd>
<metc>
<cntinfo>
<cntorgp>
<cntorg>Oak Ridge National Laboratory</cntorg>
</cntorgp>
<cntaddr>
<addrtype>Mailing and Physical</addrtype>
<address>One Bethel Valley Rd, MS-6017</address>
<city>Oak Ridge</city>
<state>TN</state>
<postal>37831</postal>
<country>USA</country>
</cntaddr>
<cntvoice>865-341-0013</cntvoice>
<cntfax>865-241-6261</cntfax>
</cntinfo>
</metc>
<metstdn>FGDC Content Standard for Digital Geospatial Metadata</metstdn>
<metstdv>FGDC-STD-001-1998</metstdv>
<mettc>local time</mettc>
</metainfo>
<dataIdInfo>
<envirDesc Sync="TRUE">Microsoft Windows 10 Version 10.0 (Build 22621) ; Esri ArcGIS 13.0.3.36057</envirDesc>
<dataLang>
<languageCode Sync="TRUE" value="eng"/>
<countryCode Sync="TRUE" value="USA"/>
</dataLang>
<idCitation>
<resTitle Sync="TRUE">strucutres_wind_risk</resTitle>
<presForm>
<PresFormCd Sync="TRUE" value="005"/>
</presForm>
</idCitation>
<spatRpType>
<SpatRepTypCd Sync="TRUE" value="001"/>
</spatRpType>
<dataExt>
<geoEle>
<GeoBndBox esriExtentType="search">
<exTypeCode Sync="TRUE">1</exTypeCode>
<westBL Sync="TRUE">-67.946728</westBL>
<eastBL Sync="TRUE">-65.244564</eastBL>
<northBL Sync="TRUE">18.515156</northBL>
<southBL Sync="TRUE">17.885878</southBL>
</GeoBndBox>
</geoEle>
</dataExt>
<idPurp>This dataset was created to inventory all structures in the US and its territories whose size is greater than 450 square feet. It provides cartographic context for urban density, patterns of use, visual reference, and navigation support. This dataset does not meet National Map Accuracy standards (https://pubs.usgs.gov/fs/1999/0171/report.pdf) and has limited cartographic use at scales larger than 1:24,000.</idPurp>
<idAbs>&lt;DIV STYLE="text-align:Left;"&gt;&lt;DIV&gt;&lt;P&gt;&lt;SPAN&gt;This feature class contains structure (building) polygons for the state/territory of Puerto Rico. This update is provided with improved feature quality, greater temporal relevancy, and/or more complete attribution, where available. The structures (buildings) are represented by polygon geometries with an attribute table described elsewhere in the metadata.&lt;/SPAN&gt;&lt;/P&gt;&lt;/DIV&gt;&lt;/DIV&gt;</idAbs>
<idCredit>Oak Ridge National Laboratory (ORNL); Federal Emergency Management Agency (FEMA) Geospatial Response Office</idCredit>
<searchKeys>
<keyword>homeland security</keyword>
<keyword>homeland defense</keyword>
<keyword>emergency response</keyword>
<keyword>structures</keyword>
<keyword>building outlines</keyword>
<keyword>USA structures</keyword>
</searchKeys>
<resConst>
<Consts>
<useLimit>&lt;DIV STYLE="text-align:Left;"&gt;&lt;DIV&gt;&lt;P&gt;&lt;SPAN&gt;None - dataset contains no personally identifiable information&lt;/SPAN&gt;&lt;/P&gt;&lt;/DIV&gt;&lt;/DIV&gt;</useLimit>
</Consts>
</resConst>
</dataIdInfo>
<mdLang>
<languageCode Sync="TRUE" value="eng"/>
<countryCode Sync="TRUE" value="USA"/>
</mdLang>
<Esri>
<DataProperties>
<itemProps>
<itemName Sync="TRUE">PR_Structures</itemName>
<imsContentType Sync="TRUE">002</imsContentType>
<nativeExtBox>
<westBL Sync="TRUE">-67.946728</westBL>
<eastBL Sync="TRUE">-65.244564</eastBL>
<southBL Sync="TRUE">17.885878</southBL>
<northBL Sync="TRUE">18.515156</northBL>
<exTypeCode Sync="TRUE">1</exTypeCode>
</nativeExtBox>
<itemLocation>
<linkage Sync="TRUE">file://\\GSD-002508-PR\C$\Users\davdiaz\OneDrive - HORNE LLP\Documents\ArcGIS\Projects\R3_Functional_Areas\Default.gdb</linkage>
<protocol Sync="TRUE">Local Area Network</protocol>
</itemLocation>
</itemProps>
<coordRef>
<type Sync="TRUE">Geographic</type>
<geogcsn Sync="TRUE">GCS_WGS_1984</geogcsn>
<csUnits Sync="TRUE">Angular Unit: Degree (0.017453)</csUnits>
<peXml Sync="TRUE">&lt;GeographicCoordinateSystem xsi:type='typens:GeographicCoordinateSystem' 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/3.0.0'&gt;&lt;WKT&gt;GEOGCS[&amp;quot;GCS_WGS_1984&amp;quot;,DATUM[&amp;quot;D_WGS_1984&amp;quot;,SPHEROID[&amp;quot;WGS_1984&amp;quot;,6378137.0,298.257223563]],PRIMEM[&amp;quot;Greenwich&amp;quot;,0.0],UNIT[&amp;quot;Degree&amp;quot;,0.0174532925199433],AUTHORITY[&amp;quot;EPSG&amp;quot;,4326]]&lt;/WKT&gt;&lt;XOrigin&gt;-400&lt;/XOrigin&gt;&lt;YOrigin&gt;-400&lt;/YOrigin&gt;&lt;XYScale&gt;999999999.99999988&lt;/XYScale&gt;&lt;ZOrigin&gt;-100000&lt;/ZOrigin&gt;&lt;ZScale&gt;10000&lt;/ZScale&gt;&lt;MOrigin&gt;-100000&lt;/MOrigin&gt;&lt;MScale&gt;10000&lt;/MScale&gt;&lt;XYTolerance&gt;8.983152841195215e-09&lt;/XYTolerance&gt;&lt;ZTolerance&gt;0.001&lt;/ZTolerance&gt;&lt;MTolerance&gt;0.001&lt;/MTolerance&gt;&lt;HighPrecision&gt;true&lt;/HighPrecision&gt;&lt;LeftLongitude&gt;-180&lt;/LeftLongitude&gt;&lt;WKID&gt;4326&lt;/WKID&gt;&lt;LatestWKID&gt;4326&lt;/LatestWKID&gt;&lt;/GeographicCoordinateSystem&gt;</peXml>
</coordRef>
<lineage>
<Process Date="20230911" Time="123118" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CopyFeatures">CopyFeatures PR_Structures "C:\Users\davdiaz\OneDrive - HORNE LLP\Documents\ArcGIS\Projects\R3_Functional_Areas\Default.gdb\PR_Structures" # # # #</Process>
</lineage>
</DataProperties>
<SyncDate>20230911</SyncDate>
<SyncTime>12310900</SyncTime>
<ModDate>20230911</ModDate>
<ModTime>12310900</ModTime>
<scaleRange>
<minScale>150000000</minScale>
<maxScale>5000</maxScale>
</scaleRange>
<ArcGISProfile>FGDC</ArcGISProfile>
</Esri>
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<distFormat>
<formatName Sync="TRUE">File Geodatabase Feature Class</formatName>
</distFormat>
</distInfo>
<mdHrLv>
<ScopeCd Sync="TRUE" value="005"/>
</mdHrLv>
<mdHrLvName Sync="TRUE">dataset</mdHrLvName>
<refSysInfo>
<RefSystem>
<refSysID>
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<idCodeSpace Sync="TRUE">EPSG</idCodeSpace>
<idVersion Sync="TRUE">6.2(3.0.1)</idVersion>
</refSysID>
</RefSystem>
</refSysInfo>
<spatRepInfo>
<VectSpatRep>
<geometObjs Name="PR_Structures">
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</geoObjTyp>
<geoObjCnt Sync="TRUE">0</geoObjCnt>
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<topLvl>
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<mdDateSt Sync="TRUE">20230911</mdDateSt>
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