100+ datasets found
  1. Esri Maps for Public Policy

    • california-smart-climate-housing-growth-usfca.hub.arcgis.com
    • hub-lincolninstitute.hub.arcgis.com
    • +3more
    Updated Oct 1, 2019
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    Esri (2019). Esri Maps for Public Policy [Dataset]. https://california-smart-climate-housing-growth-usfca.hub.arcgis.com/datasets/esri::esri-maps-for-public-policy
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    Dataset updated
    Oct 1, 2019
    Dataset authored and provided by
    Esrihttp://esri.com/
    Description

    OVERVIEWThis site is dedicated to raising the level of spatial and data literacy used in public policy. We invite you to explore curated content, training, best practices, and datasets that can provide a baseline for your research, analysis, and policy recommendations. Learn about emerging policy questions and how GIS can be used to help come up with solutions to those questions.EXPLOREGo to your area of interest and explore hundreds of maps about various topics such as social equity, economic opportunity, public safety, and more. Browse and view the maps, or collect them and share via a simple URL. Sharing a collection of maps is an easy way to use maps as a tool for understanding. Help policymakers and stakeholders use data as a driving factor for policy decisions in your area.ISSUESBrowse different categories to find data layers, maps, and tools. Use this set of content as a driving force for your GIS workflows related to policy. RESOURCESTo maximize your experience with the Policy Maps, we’ve assembled education, training, best practices, and industry perspectives that help raise your data literacy, provide you with models, and connect you with the work of your peers.

  2. ArcGIS Dashboards Training Videos for COVID-19

    • coronavirus-resources.esri.com
    • coronavirus-disasterresponse.hub.arcgis.com
    Updated Apr 23, 2020
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    Esri’s Disaster Response Program (2020). ArcGIS Dashboards Training Videos for COVID-19 [Dataset]. https://coronavirus-resources.esri.com/documents/fbc4179e362a4609a10fd479b82af386
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    Dataset updated
    Apr 23, 2020
    Dataset provided by
    Esrihttp://esri.com/
    Authors
    Esri’s Disaster Response Program
    Description

    ArcGIS Dashboards Training Videos for COVID-19With the current COVID-19 situation across the world, there’s been a proliferation of corona virus themed dashboards emerging over the last few weeks in ArcGIS Online. Many of these were created with ArcGIS Dashboards, which enables users to convey information by presenting location-based analytics using intuitive and interactive data visualizations on a single screen._Communities around the world are taking strides in mitigating the threat that COVID-19 (coronavirus) poses. Geography and location analysis have a crucial role in better understanding this evolving pandemic.When you need help quickly, Esri can provide data, software, configurable applications, and technical support for your emergency GIS operations. Use GIS to rapidly access and visualize mission-critical information. Get the information you need quickly, in a way that’s easy to understand, to make better decisions during a crisis.Esri’s Disaster Response Program (DRP) assists with disasters worldwide as part of our corporate citizenship. We support response and relief efforts with GIS technology and expertise.More information...

  3. ArcGIS Technology for Mapping COVID-19

    • coronavirus-resources.esri.com
    • coronavirus-disasterresponse.hub.arcgis.com
    Updated Apr 3, 2020
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    Esri’s Disaster Response Program (2020). ArcGIS Technology for Mapping COVID-19 [Dataset]. https://coronavirus-resources.esri.com/datasets/arcgis-technology-for-mapping-covid-19
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    Dataset updated
    Apr 3, 2020
    Dataset provided by
    Esrihttp://esri.com/
    Authors
    Esri’s Disaster Response Program
    Description

    ArcGIS Technology for Mapping COVID-19 (Esri Training).Communities around the world are taking strides in mitigating the threat that COVID-19 (coronavirus) poses. Geography and location analysis have a crucial role in better understanding this evolving pandemic. This plan will teach you the core ArcGIS technology necessary to understand, prepare for, and respond to COVID-19 in your community or organization.More information about Esri training..._Communities around the world are taking strides in mitigating the threat that COVID-19 (coronavirus) poses. Geography and location analysis have a crucial role in better understanding this evolving pandemic.When you need help quickly, Esri can provide data, software, configurable applications, and technical support for your emergency GIS operations. Use GIS to rapidly access and visualize mission-critical information. Get the information you need quickly, in a way that’s easy to understand, to make better decisions during a crisis.Esri’s Disaster Response Program (DRP) assists with disasters worldwide as part of our corporate citizenship. We support response and relief efforts with GIS technology and expertise.More information...

  4. World Ecological Facets Landform Classes

    • geoportal-pacificcore.hub.arcgis.com
    • cacgeoportal.com
    • +3more
    Updated Jul 14, 2015
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    Esri (2015). World Ecological Facets Landform Classes [Dataset]. https://geoportal-pacificcore.hub.arcgis.com/datasets/cd817a746aa7437cbd72a6d39cdb4559
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    Dataset updated
    Jul 14, 2015
    Dataset authored and provided by
    Esrihttp://esri.com/
    Area covered
    Description

    Landforms are large recognizable features such as mountains, hills and plains; they are an important determinant of ecological character, habitat definition and terrain analysis. Landforms are important to the distribution of life in natural systems and are the basis for opportunities in built systems, and therefore landforms play a useful role in all natural science fields of study and planning disciplines.Dataset SummaryPhenomenon Mapped: LandformsUnits: MetersCell Size: 231.91560581932 metersSource Type: ThematicPixel Type: 8-bit unsigned integerData Coordinate System: WGS 1984Mosaic Projection: Web Mercator Auxiliary SphereExtent: GlobalSource: EsriPublication Date: May 2016ArcGIS Server URL: https://landscape7.arcgis.com/arcgis/In February 2017, Esri updated the World Landforms - Improved Hammond Method service with two display functions: Ecological Land Units landform classes and Ecological Facets landform classes. This layer represents Ecological Facets landform classes. You can view the Ecological Land Units landform classes by choosing Image Display, and changing the Renderer. This layer was produced using the Improved Hammond Landform Classification Algorithm produced by Esri in 2016. This algorithm published and described by Karagulle et al. 2017: Modeling global Hammond landform regions from 250-m elevation data in Transactions in GIS.The algorithm, which is based on the most recent work in this area by Morgan, J. & Lesh, A. 2005: Developing Landform Maps Using Esri’s Model Builder., Esri converted Morgan’s model into a Python script and revised it to work on global 250-meter resolution GMTED2010 elevation data. Hammond’s landform classification characterizes regions rather than identifying individual features, thus, this layer contains sixteen classes of landforms:Nearly flat plainsSmooth plains with some local reliefIrregular plains with moderate relief Irregular plains with low hillsScattered moderate hillsScattered high hillsScattered low mountainsScattered high mountainsModerate hillsHigh hills Tablelands with moderate reliefTablelands with considerable reliefTablelands with high relief Tablelands with very high relief Low mountainsHigh mountainsTo produce these classes, Esri staff first projected the 250-meter resolution GMTED elevation data to the World Equidistant Cylindrical coordinate system. Each cell in this dataset was assigned three characteristics: slope based on 3-km neighborhood, relief based on 6 km neighborhood, and profile based on 6-km neighborhood. The last step was to overlay the combination of these three characteristics with areas that are exclusively plains. Slope is the percentage of the 3-km neighborhood occupied by gentle slope. Hammond specified 8% as the threshold for gentle slope. Slope is used to define how flat or steep the terrain is. Slope was classified into one of four classes:

    Percent of neighborhood over 8% of slope

    Slope Classes

    0 - 20%

    400

    21% -50%

    300

    51% - 80%

    200

    81%

    100

    Local Relief is the difference between the maximum and minimum elevation within in the 6-km neighborhood. Local relief is used to define terrain how rugged or the complexity of the terrain's texture. Relief was assigned one of six classes:

    Change in elevation

    Relief Class ID

    0 – 30 meters

    10

    31 meter – 90 meters

    20

    91 meter – 150 meters

    30

    151 meter – 300 meters

    40

    301 meter – 900 meters

    50

    900 meters

    60

    The combination of slope and relief begin to define terrain as mountains, hills and plains. However, the difference between mountains or hills and tablelands cannot be distinguished using only these parameters. Profile is used to determine tableland areas. Profile identifies neighborhoods with upland and lowland areas, and calculates the percent area of gently sloping terrain within those upland and lowland areas. A 6-km circular neighborhood was used to calculate the profile parameter. Upland/lowland is determined by the difference between average local relief and elevation. In the 6-km neighborhood window, if the difference between maximum elevation and cell’s elevation is smaller than half of the local relief it’s an upland. If the difference between maximum elevation and cell’s elevation is larger than half of the local relief it’s a lowland. Profile was assigned one of five classes:

    Percent of neighborhood over 8% slope in upland or lowland areas

    Profile Class

    Less than 50% gentle slope is in upland or lowland

    0

    More than 75% of gentle slope is in lowland

    1

    50%-75% of gentle slope is in lowland

    2

    50-75% of gentle slope is in upland

    3

    More than 75% of gentle slope is in upland

    4

    Early reviewers of the resulting classes noted one confusing outcome, which was that areas were classified as "plains with low mountains", or "plains with hills" were often mostly plains, and the hills or mountains were part of an adjacent set of exclusively identified hills or mountains. To address this areas that are exclusively plains were produced, and used to override these confusing areas. The hills and mountains within those areas were converted to their respective landform class.The combination of slope, relief and profile merged with the areas of plains, can be better understood using the following diagram, which uses the colors in this layer to show which classes are present and what parameter values produced them:What can you do with this layer?This layer is suitable for both visualization and analysis. It can be used in ArcGIS Online in web maps and applications and can be used in ArcGIS Desktop. This layer is part of a larger collection of landscape layers that you can use to perform a wide variety of mapping and analysis tasks.The Living Atlas of the World provides an easy way to explore the landscape layers and many other beautiful and authoritative maps on hundreds of topics.Geonet is a good resource for learning more about landscape layers and the Living Atlas of the World. To get started see the Living Atlas Discussion Group.The Esri Insider Blog provides an introduction to the Ecophysiographic Mapping project.

  5. d

    California State Waters Map Series--Offshore of Point Conception Web...

    • catalog.data.gov
    • data.usgs.gov
    Updated Jul 6, 2024
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    U.S. Geological Survey (2024). California State Waters Map Series--Offshore of Point Conception Web Services [Dataset]. https://catalog.data.gov/dataset/california-state-waters-map-series-offshore-of-point-conception-web-services
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    Dataset updated
    Jul 6, 2024
    Dataset provided by
    United States Geological Surveyhttp://www.usgs.gov/
    Area covered
    Point Conception, California
    Description

    In 2007, the California Ocean Protection Council initiated the California Seafloor Mapping Program (CSMP), designed to create a comprehensive seafloor map of high-resolution bathymetry, marine benthic habitats, and geology within California’s State Waters. The program supports a large number of coastal-zone- and ocean-management issues, including the California Marine Life Protection Act (MLPA) (California Department of Fish and Wildlife, 2008), which requires information about the distribution of ecosystems as part of the design and proposal process for the establishment of Marine Protected Areas. A focus of CSMP is to map California’s State Waters with consistent methods at a consistent scale. The CSMP approach is to create highly detailed seafloor maps through collection, integration, interpretation, and visualization of swath sonar data (the undersea equivalent of satellite remote-sensing data in terrestrial mapping), acoustic backscatter, seafloor video, seafloor photography, high-resolution seismic-reflection profiles, and bottom-sediment sampling data. The map products display seafloor morphology and character, identify potential marine benthic habitats, and illustrate both the surficial seafloor geology and shallow (to about 100 m) subsurface geology. It is emphasized that the more interpretive habitat and geology data rely on the integration of multiple, new high-resolution datasets and that mapping at small scales would not be possible without such data. This approach and CSMP planning is based in part on recommendations of the Marine Mapping Planning Workshop (Kvitek and others, 2006), attended by coastal and marine managers and scientists from around the state. That workshop established geographic priorities for a coastal mapping project and identified the need for coverage of “lands” from the shore strand line (defined as Mean Higher High Water; MHHW) out to the 3-nautical-mile (5.6-km) limit of California’s State Waters. Unfortunately, surveying the zone from MHHW out to 10-m water depth is not consistently possible using ship-based surveying methods, owing to sea state (for example, waves, wind, or currents), kelp coverage, and shallow rock outcrops. Accordingly, some of the data presented in this series commonly do not cover the zone from the shore out to 10-m depth. This data is part of a series of online U.S. Geological Survey (USGS) publications, each of which includes several map sheets, some explanatory text, and a descriptive pamphlet. Each map sheet is published as a PDF file. Geographic information system (GIS) files that contain both ESRI ArcGIS raster grids (for example, bathymetry, seafloor character) and geotiffs (for example, shaded relief) are also included for each publication. For those who do not own the full suite of ESRI GIS and mapping software, the data can be read using ESRI ArcReader, a free viewer that is available at http://www.esri.com/software/arcgis/arcreader/index.html (last accessed September 20, 2013). The California Seafloor Mapping Program is a collaborative venture between numerous different federal and state agencies, academia, and the private sector. CSMP partners include the California Coastal Conservancy, the California Ocean Protection Council, the California Department of Fish and Wildlife, the California Geological Survey, California State University at Monterey Bay’s Seafloor Mapping Lab, Moss Landing Marine Laboratories Center for Habitat Studies, Fugro Pelagos, Pacific Gas and Electric Company, National Oceanic and Atmospheric Administration (NOAA, including National Ocean Service–Office of Coast Surveys, National Marine Sanctuaries, and National Marine Fisheries Service), U.S. Army Corps of Engineers, the Bureau of Ocean Energy Management, the National Park Service, and the U.S. Geological Survey. These web services for the Offshore of Point Conception map area includes data layers that are associated to GIS and map sheets available from the USGS CSMP web page at https://walrus.wr.usgs.gov/mapping/csmp/index.html. Each published CSMP map area includes a data catalog of geographic information system (GIS) files; map sheets that contain explanatory text; and an associated descriptive pamphlet. This web service represents the available data layers for this map area. Data was combined from different sonar surveys to generate a comprehensive high-resolution bathymetry and acoustic-backscatter coverage of the map area. These data reveal a range of physiographic including exposed bedrock outcrops, large fields of sand waves, as well as many human impacts on the seafloor. To validate geological and biological interpretations of the sonar data, the U.S. Geological Survey towed a camera sled over specific offshore locations, collecting both video and photographic imagery; these “ground-truth” surveying data are available from the CSMP Video and Photograph Portal at https://doi.org/10.5066/F7J1015K. The “seafloor character” data layer shows classifications of the seafloor on the basis of depth, slope, rugosity (ruggedness), and backscatter intensity and which is further informed by the ground-truth-survey imagery. The “potential habitats” polygons are delineated on the basis of substrate type, geomorphology, seafloor process, or other attributes that may provide a habitat for a specific species or assemblage of organisms. Representative seismic-reflection profile data from the map area is also include and provides information on the subsurface stratigraphy and structure of the map area. The distribution and thickness of young sediment (deposited over the past about 21,000 years, during the most recent sea-level rise) is interpreted on the basis of the seismic-reflection data. The geologic polygons merge onshore geologic mapping (compiled from existing maps by the California Geological Survey) and new offshore geologic mapping that is based on integration of high-resolution bathymetry and backscatter imagery seafloor-sediment and rock samplesdigital camera and video imagery, and high-resolution seismic-reflection profiles. The information provided by the map sheets, pamphlet, and data catalog has a broad range of applications. High-resolution bathymetry, acoustic backscatter, ground-truth-surveying imagery, and habitat mapping all contribute to habitat characterization and ecosystem-based management by providing essential data for delineation of marine protected areas and ecosystem restoration. Many of the maps provide high-resolution baselines that will be critical for monitoring environmental change associated with climate change, coastal development, or other forcings. High-resolution bathymetry is a critical component for modeling coastal flooding caused by storms and tsunamis, as well as inundation associated with longer term sea-level rise. Seismic-reflection and bathymetric data help characterize earthquake and tsunami sources, critical for natural-hazard assessments of coastal zones. Information on sediment distribution and thickness is essential to the understanding of local and regional sediment transport, as well as the development of regional sediment-management plans. In addition, siting of any new offshore infrastructure (for example, pipelines, cables, or renewable-energy facilities) will depend on high-resolution mapping. Finally, this mapping will both stimulate and enable new scientific research and also raise public awareness of, and education about, coastal environments and issues. Web services were created using an ArcGIS service definition file. The ArcGIS REST service and OGC WMS service include all Offshore of Point Conception map area data layers. Data layers are symbolized as shown on the associated map sheets.

  6. Kreisgrenzen 2023

    • opendata.coworkingmap.de
    • anrgeodata.vermont.gov
    • +6more
    Updated Jul 6, 2023
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    Esri Deutschland (2023). Kreisgrenzen 2023 [Dataset]. https://opendata.coworkingmap.de/maps/esri-de-content::kreisgrenzen-2023/about
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    Dataset updated
    Jul 6, 2023
    Dataset provided by
    Esrihttp://esri.com/
    Authors
    Esri Deutschland
    Area covered
    Description

    Der Service stellt die administrativen Kreisgrenzen zum Stand 01. Januar 2023 ohne Wasserflächen im Maßstab 1:250.000 zur Verfügung.Der Datenbestand entspricht den Georeferenzdaten VG250-Ebenen des BKG Bundesamtes für Kartographie und Geodäsie auf Ebene Kreis (KRS) mit folgender Geometrieänderung:Es wurden nur die Land-Geometrien (GF = 4) übernommen und auf Web Mercator umprojiziert.VG250 Datensatzbeschreibung des BKGEnglish This service provides the administrative County boundaries of Germany as of January 1st, 2023.This layer only contains land surfaces at a 1:250,000 scale. It corresponds to the georeferenced VG250 data of the BKG Federal Agency for Cartography and Geodesy.Only the land geometries (GF=4) were adopted and projected to Web Mercator.

  7. Power Line Classification

    • morocco.africageoportal.com
    • angola.africageoportal.com
    • +1more
    Updated Dec 15, 2020
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    Esri (2020). Power Line Classification [Dataset]. https://morocco.africageoportal.com/content/6ce6dae2d62c4037afc3a3abd19afb11
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    Dataset updated
    Dec 15, 2020
    Dataset authored and provided by
    Esrihttp://esri.com/
    Description

    The classification of point cloud datasets to identify distribution wires is useful for identifying vegetation encroachment around power lines. Such workflows are important for preventing fires and power outages and are typically manual, recurring, and labor-intensive. This model is designed to extract distribution wires at the street level. Its predictions for high-tension transmission wires are less consistent with changes in geography as compared to street-level distribution wires. In the case of high-tension transmission wires, a lower ‘recall’ value is observed as compared to the value observed for low-lying street wires and poles.Using the modelFollow the guide to use the model. The model can be used with ArcGIS Pro's Classify Point Cloud Using Trained Model tool. Before using this model, ensure that the supported deep learning libraries are installed. For more details, check Deep Learning Libraries Installer for ArcGIS.InputThe model accepts unclassified point clouds with point geometry (X, Y and Z values). Note: The model is not dependent on any additional attributes such as Intensity, Number of Returns, etc. This model is trained to work on unclassified point clouds that are in a projected coordinate system, in which the units of X, Y and Z are based on the metric system of measurement. If the dataset is in degrees or feet, it needs to be re-projected accordingly. The model was trained using a training dataset with the full set of points. Therefore, it is important to make the full set of points available to the neural network while predicting - allowing it to better discriminate points of 'class of interest' versus background points. It is recommended to use 'selective/target classification' and 'class preservation' functionalities during prediction to have better control over the classification and scenarios with false positives.The model was trained on airborne lidar datasets and is expected to perform best with similar datasets. Classification of terrestrial point cloud datasets may work but has not been validated. For such cases, this pre-trained model may be fine-tuned to save on cost, time, and compute resources while improving accuracy. Another example where fine-tuning this model can be useful is when the object of interest is tram wires, railway wires, etc. which are geometrically similar to electricity wires. When fine-tuning this model, the target training data characteristics such as class structure, maximum number of points per block and extra attributes should match those of the data originally used for training this model (see Training data section below).OutputThe model will classify the point cloud into the following classes with their meaning as defined by the American Society for Photogrammetry and Remote Sensing (ASPRS) described below: Classcode Class Description 0 Background Class 14 Distribution Wires 15 Distribution Tower/PolesApplicable geographiesThe model is expected to work within any geography. It's seen to produce favorable results as shown here in many regions. However, results can vary for datasets that are statistically dissimilar to training data.Model architectureThis model uses the RandLANet model architecture implemented in ArcGIS API for Python.Accuracy metricsThe table below summarizes the accuracy of the predictions on the validation dataset. - Precision Recall F1-score Background (0) 0.999679 0.999876 0.999778 Distribution Wires (14) 0.955085 0.936825 0.945867 Distribution Poles (15) 0.707983 0.553888 0.621527Training dataThis model is trained on manually classified training dataset provided to Esri by AAM group. The training data used has the following characteristics: X, Y, and Z linear unitmeter Z range-240.34 m to 731.17 m Number of Returns1 to 5 Intensity1 to 4095 Point spacing0.2 ± 0.1 Scan angle-42 to +35 Maximum points per block20000 Extra attributesNone Class structure[0, 14, 15]Sample resultsHere are a few results from the model.

  8. LPG Vehicle Fuel System Maintenance Workshops with Red Identification...

    • opendata.esrichina.hk
    • hub.arcgis.com
    Updated Jul 2, 2021
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    Esri China (Hong Kong) Ltd. (2021). LPG Vehicle Fuel System Maintenance Workshops with Red Identification Signage in Hong Kong [Dataset]. https://opendata.esrichina.hk/datasets/esrihk::lpg-vehicle-fuel-system-maintenance-workshops-with-red-identification-signage-in-hong-kong/about
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    Dataset updated
    Jul 2, 2021
    Dataset provided by
    Esrihttp://esri.com/
    Authors
    Esri China (Hong Kong) Ltd.
    Area covered
    Description

    This layer shows the location of LPG Vehicle Fuel System Maintenance Workshops with Red Identification Signage in Hong Kong. It is a subset of the data made available by the Electrical and Mechanical Services Department under the Government of Hong Kong Special Administrative Region (the "Government") at https://portal.csdi.gov.hk ("CSDI Portal"). The source data has been processed and converted into Esri File Geodatabase format and then uploaded to Esri’s ArcGIS Online platform for sharing and reference purpose. The objectives are to facilitate our Hong Kong ArcGIS Online users to use the data in a spatial ready format and save their data conversion effort.For details about the data, source format and terms of conditions of usage, please refer to the website of Hong Kong CSDI Portal at https://portal.csdi.gov.hk.

  9. Use Deep Learning to Assess Palm Tree Health

    • hub.arcgis.com
    Updated Mar 13, 2019
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    Esri Tutorials (2019). Use Deep Learning to Assess Palm Tree Health [Dataset]. https://hub.arcgis.com/documents/d50cea3d161542b681333f1bc265029a
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    Dataset updated
    Mar 13, 2019
    Dataset provided by
    Esrihttp://esri.com/
    Authors
    Esri Tutorials
    Description

    Coconuts and coconut products are an important commodity in the Tongan economy. Plantations, such as the one in the town of Kolovai, have thousands of trees. Inventorying each of these trees by hand would require lots of time and manpower. Alternatively, tree health and location can be surveyed using remote sensing and deep learning. In this lesson, you'll use the Deep Learning tools in ArcGIS Pro to create training samples and run a deep learning model to identify the trees on the plantation. Then, you'll estimate tree health using a Visible Atmospherically Resistant Index (VARI) calculation to determine which trees may need inspection or maintenance.

    To detect palm trees and calculate vegetation health, you only need ArcGIS Pro with the Image Analyst extension. To publish the palm tree health data as a feature service, you need ArcGIS Online and the Spatial Analyst extension.

    In this lesson you will build skills in these areas:

    • Creating training schema
    • Digitizing training samples
    • Using deep learning tools in ArcGIS Pro
    • Calculating VARI
    • Extracting data to points

    Learn ArcGIS is a hands-on, problem-based learning website using real-world scenarios. Our mission is to encourage critical thinking, and to develop resources that support STEM education.

  10. Families Clinics and Education and Training Centre in Family Medicine in...

    • opendata.esrichina.hk
    • hub.arcgis.com
    Updated Jul 8, 2019
    + more versions
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    Esri China (Hong Kong) Ltd. (2019). Families Clinics and Education and Training Centre in Family Medicine in Hong Kong [Dataset]. https://opendata.esrichina.hk/datasets/families-clinics-and-education-and-training-centre-in-family-medicine-in-hong-kong-1
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    Dataset updated
    Jul 8, 2019
    Dataset provided by
    Esrihttp://esri.com/
    Authors
    Esri China (Hong Kong) Ltd.
    Area covered
    Description

    This layer shows the location of Families Clinics and Education and Training Centre in Family Medicine in Hong Kong. It is a subset of the data made available by the Department of Health under the Government of Hong Kong Special Administrative Region (the “Government”) at https://DATA.GOV.HK/ (“DATA.GOV.HK”). The source data is in XLSX format and has been processed and converted into Esri File Geodatabase format and then uploaded to Esri’s ArcGIS Online platform for sharing and reference purpose. The objectives are to facilitate our Hong Kong ArcGIS Online users to use the data in a spatial ready format and save their data conversion effort.For details about the data, source format and terms of conditions of usage, please refer to the website of DATA.GOV.HK at https://data.gov.hk.

  11. n

    05 - Rates of population change - Esri GeoInquiries collection for...

    • library.ncge.org
    Updated Jun 8, 2020
    + more versions
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    NCGE (2020). 05 - Rates of population change - Esri GeoInquiries collection for Mathematics [Dataset]. https://library.ncge.org/documents/9789848d790446d1a54606a534f14bdb
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    Dataset updated
    Jun 8, 2020
    Dataset authored and provided by
    NCGE
    Description

    THE GEOINQUIRIES™ COLLECTION FOR MATHEMATICS

    http://www.esri.com/geoinquiries

    The GeoInquiry™ collection for Mathematics contains 15 free, standards-based activities that correspond and extend spatial concepts found in course textbooks frequently used in introductory algebra or geometry classes. The activities use a common inquiry-based instructional model, require only 15 minutes to deliver, and are device/laptop agnostic. Each activity includes an ArcGIS Online map but requires no login or installation. The activities harmonize with the Common Core mathematics national curriculum standards.

    All Mathematics GeoInquiries™ can be found at: http://eseriurl.com/mathGeoInquiries

    All GeoInquiries™ can be found at: http://www.esri.com/geoinquiries

  12. p

    Building Point Classification - New Zealand

    • pacificgeoportal.com
    • hub.arcgis.com
    • +2more
    Updated Sep 17, 2023
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    Eagle Technology Group Ltd (2023). Building Point Classification - New Zealand [Dataset]. https://www.pacificgeoportal.com/content/ebc54f498df94224990cf5f6598a5665
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    Dataset updated
    Sep 17, 2023
    Dataset authored and provided by
    Eagle Technology Group Ltd
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Area covered
    New Zealand
    Description

    This New Zealand Point Cloud Classification Deep Learning Package will classify point clouds into building and background classes. This model is optimized to work with New Zealand aerial LiDAR data.The classification of point cloud datasets to identify Building is useful in applications such as high-quality 3D basemap creation, urban planning, and planning climate change response.Building could have a complex irregular geometrical structure that is hard to capture using traditional means. Deep learning models are highly capable of learning these complex structures and giving superior results.This model is designed to extract Building in both urban and rural area in New Zealand.The Training/Testing/Validation dataset are taken within New Zealand resulting of a high reliability to recognize the pattern of NZ common building architecture.Licensing requirementsArcGIS Desktop - ArcGIS 3D Analyst extension for ArcGIS ProUsing the modelThe model can be used in ArcGIS Pro's Classify Point Cloud Using Trained Model tool. Before using this model, ensure that the supported deep learning frameworks libraries are installed. For more details, check Deep Learning Libraries Installer for ArcGIS.Note: Deep learning is computationally intensive, and a powerful GPU is recommended to process large datasets.The model is trained with classified LiDAR that follows the The model was trained using a training dataset with the full set of points. Therefore, it is important to make the full set of points available to the neural network while predicting - allowing it to better discriminate points of 'class of interest' versus background points. It is recommended to use 'selective/target classification' and 'class preservation' functionalities during prediction to have better control over the classification and scenarios with false positives.The model was trained on airborne lidar datasets and is expected to perform best with similar datasets. Classification of terrestrial point cloud datasets may work but has not been validated. For such cases, this pre-trained model may be fine-tuned to save on cost, time, and compute resources while improving accuracy. Another example where fine-tuning this model can be useful is when the object of interest is tram wires, railway wires, etc. which are geometrically similar to electricity wires. When fine-tuning this model, the target training data characteristics such as class structure, maximum number of points per block and extra attributes should match those of the data originally used for training this model (see Training data section below).OutputThe model will classify the point cloud into the following classes with their meaning as defined by the American Society for Photogrammetry and Remote Sensing (ASPRS) described below: 0 Background 6 BuildingApplicable geographiesThe model is expected to work well in the New Zealand. It's seen to produce favorable results as shown in many regions. However, results can vary for datasets that are statistically dissimilar to training data.Training dataset - Auckland, Christchurch, Kapiti, Wellington Testing dataset - Auckland, WellingtonValidation/Evaluation dataset - Hutt City Dataset City Training Auckland, Christchurch, Kapiti, Wellington Testing Auckland, Wellington Validating HuttModel architectureThis model uses the SemanticQueryNetwork model architecture implemented in ArcGIS Pro.Accuracy metricsThe table below summarizes the accuracy of the predictions on the validation dataset. - Precision Recall F1-score Never Classified 0.984921 0.975853 0.979762 Building 0.951285 0.967563 0.9584Training dataThis model is trained on classified dataset originally provided by Open TopoGraphy with < 1% of manual labelling and correction.Train-Test split percentage {Train: 75~%, Test: 25~%} Chosen this ratio based on the analysis from previous epoch statistics which appears to have a descent improvementThe training data used has the following characteristics: X, Y, and Z linear unitMeter Z range-137.74 m to 410.50 m Number of Returns1 to 5 Intensity16 to 65520 Point spacing0.2 ± 0.1 Scan angle-17 to +17 Maximum points per block8192 Block Size50 Meters Class structure[0, 6]Sample resultsModel to classify a dataset with 23pts/m density Wellington city dataset. The model's performance are directly proportional to the dataset point density and noise exlcuded point clouds.To learn how to use this model, see this story

  13. a

    10.5 Telling Your Story with Esri Story Maps

    • training-iowadot.opendata.arcgis.com
    • hub.arcgis.com
    Updated Mar 3, 2017
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    Iowa Department of Transportation (2017). 10.5 Telling Your Story with Esri Story Maps [Dataset]. https://training-iowadot.opendata.arcgis.com/documents/709a641029514a4d83e81abadc37b5a1
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    Dataset updated
    Mar 3, 2017
    Dataset authored and provided by
    Iowa Department of Transportation
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    Esri story maps are an exciting and popular feature of the ArcGIS platform that combine maps, photos, text, and other media, in a single interactive application. Any topic or project that includes a map can be a story map. In this seminar, you will learn about Esri application templates that simplify story map creation and require no coding. The presenters will discuss how to choose the best template for a project and the steps to create a compelling story map from a template.

  14. Land Cover Classification (Landsat 8)

    • cacgeoportal.com
    • morocco.africageoportal.com
    • +7more
    Updated Sep 19, 2020
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    Esri (2020). Land Cover Classification (Landsat 8) [Dataset]. https://www.cacgeoportal.com/content/e732ee81a9c14c238a14df554a8e3225
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    Dataset updated
    Sep 19, 2020
    Dataset authored and provided by
    Esrihttp://esri.com/
    Area covered
    Description

    Land cover describes the surface of the earth. Land cover maps are useful in urban planning, resource management, change detection, agriculture, and a variety of other applications in which information related to earth surface is required. Land cover classification is a complex exercise and is hard to capture using traditional means. Deep learning models are highly capable of learning these complex semantics and can produce superior results.Using the modelFollow the guide to use the model. Before using this model, ensure that the supported deep learning libraries are installed. For more details, check Deep Learning Libraries Installer for ArcGIS.Fine-tuning the modelThis model can be fine-tuned using the Train Deep Learning Model tool. Follow the guide to fine-tune this model.InputRaster, mosaic dataset, or image service. (Preferred cell size is 30 meters.)OutputClassified raster with the same classes as in the National Land Cover Database (NLCD) 2016.Note: The classified raster contains 20 classes based on a modified Anderson Level II classification system as used by the National Land Cover Database.Applicable geographiesThis model is expected to work well in the United States.Model architectureThis model uses the UNet model architecture implemented in ArcGIS API for Python.Accuracy metricsThis model has an overall accuracy of 77 percent. The table below summarizes the precision, recall and F1-score of the model on the validation dataset.ClassCollection 2 Level 2 ImageryCollection 1 Level 1 ImageryPrecisionRecallF1 ScorePrecisionRecallF1 ScoreOpen Water0.960.970.960.950.970.96Perennial Snow/Ice0.860.690.770.490.940.64Developed, Open Space0.510.380.440.430.380.4Developed, Low Intensity0.520.460.490.470.480.47Developed, Medium Intensity0.540.50.520.490.540.51Developed, High Intensity0.670.540.60.550.680.61Barren Land0.760.590.660.60.770.68Deciduous Forest0.740.810.780.780.760.77Evergreen Forest0.770.820.790.80.820.81Mixed Forest0.560.470.510.50.530.51Shrub/Scrub0.820.820.820.840.810.83Herbaceous0.780.740.760.790.770.78Hay/Pasture0.70.740.720.670.750.71Cultivated Crops0.870.910.890.910.90.9Woody Wetlands0.70.680.690.670.680.68Emergent Herbaceous Wetlands0.720.540.620.540.610.57Training dataThis model has been trained on the National Land Cover Database (NLCD) 2016 with the same Landsat 8 scenes that were used to produce the database. Scene IDs for the imagery were available in the metadata of the dataset.Sample resultsHere are a few results from the model.

  15. StateBoundaries

    • anrgeodata.vermont.gov
    Updated May 18, 2018
    + more versions
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    Esri Training Services (2018). StateBoundaries [Dataset]. https://anrgeodata.vermont.gov/maps/f742fb8f6fde4cf9b8d407e3808542cf_0/about
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    Dataset updated
    May 18, 2018
    Dataset provided by
    Esrihttp://esri.com/
    Authors
    Esri Training Services
    Area covered
    Description

    This map layer portrays the State boundaries of the United States, Puerto Rico, and the U.S. Virgin Islands. The map layer was created by extracting county polygon features from the CENSUS 2006 TIGER/Line files produced by the U.S. Census Bureau. These files were then merged into a single file and county boundaries within States were removed. This is a revised version of the July 2012 map layer.

  16. ArcGIS Dashboards Workshop for COVID-19 Emergency Management

    • coronavirus-disasterresponse.hub.arcgis.com
    Updated Apr 23, 2020
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    Esri’s Disaster Response Program (2020). ArcGIS Dashboards Workshop for COVID-19 Emergency Management [Dataset]. https://coronavirus-disasterresponse.hub.arcgis.com/documents/e04abe0401ec476d8b4139580c5d7b84
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    Dataset updated
    Apr 23, 2020
    Dataset provided by
    Esrihttp://esri.com/
    Authors
    Esri’s Disaster Response Program
    Description

    Monitor COVID-19 at a glance.ArcGIS Dashboards enables users to convey information by presenting location-based analytics using intuitive and interactive data visualizations on a single screen. This video series will help you learn about ArcGIS Dashboards and how to leverage them for COVID-19 Emergency Management. Enroll in this plan to learn how to bring your data into ArcGIS Online, then configure and design your own dashboards, and make them interactive._Communities around the world are taking strides in mitigating the threat that COVID-19 (coronavirus) poses. Geography and location analysis have a crucial role in better understanding this evolving pandemic.When you need help quickly, Esri can provide data, software, configurable applications, and technical support for your emergency GIS operations. Use GIS to rapidly access and visualize mission-critical information. Get the information you need quickly, in a way that’s easy to understand, to make better decisions during a crisis.Esri’s Disaster Response Program (DRP) assists with disasters worldwide as part of our corporate citizenship. We support response and relief efforts with GIS technology and expertise.More information...

  17. Land cover of Liberia - Globcover Regional (46 classes)

    • data.amerigeoss.org
    html, http, png, wms +1
    Updated Mar 14, 2023
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    Food and Agriculture Organization (2023). Land cover of Liberia - Globcover Regional (46 classes) [Dataset]. https://data.amerigeoss.org/dataset/68f12101-c75a-45d0-9d85-5bb49859040d
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    zip, http, wms, html, pngAvailable download formats
    Dataset updated
    Mar 14, 2023
    Dataset provided by
    Food and Agriculture Organizationhttp://fao.org/
    License

    Attribution-NonCommercial-ShareAlike 3.0 (CC BY-NC-SA 3.0)https://creativecommons.org/licenses/by-nc-sa/3.0/
    License information was derived automatically

    Area covered
    Liberia
    Description

    This land cover data set is derived from the original raster based Globcover regional (Africa) archive. It has been post-processed to generate a vector version at national extent with the LCCS regional legend (46 classes). This database can be analyzed in the GLCN software Advanced Database Gateway (ADG), which provides a user-friendly interface and advanced functionalities to breakdown the LCCS classes in their classifiers for further aggregations and analysis.

    The data set is intended for free public access.

    The shape file's attributes contain the following fields: -Area (sqm) -ID -Gridcode (Globcover cell value) -LCCCode (unique LCCS code)

    You can download a zip archive containing: -the shape file (.shp) -the ArcGis layer file with global legend (.lyr) -the ArcView 3 legend file (.avl) -the LCCS legend tables (.xls)

    Supplemental Information:

    This land cover product is a vector version (ESRI shape) of the Globcover archive that was published in 2008 as result of an initiative launched in 2004 by the European Space Agency (ESA). Globcover is currently the most recent (2005) and resoluted (300 m) datasets on land cover globally. Given the need of this valuable information for environmental studies, natural resources management and policy formulation, through activities of the Global Land Cover Network (GLCN) programme, the Globcover has been reprocessed to generate databases at national extent that can be analyzed through the Advanced Database Gateway software (ADG) by GLCN. ADG is a cross-cutting interrogation software that allows the easy and fast recombination of land cover polygons according to the individual end-user requirements. Aggregated land cover classes can be generated not only by name, but also using the set of existing classifiers. ADG uses land cover data with a Land Cover Classification System (LCCS) legend. The ADG software is available for download on the GLCN web site at http://www.glcn.org/sof_7_en.jsp

    Contact points:

    Metadata Contact: FAO-Data

    Resource Contact: Antonio Martucci

    Data lineage:

    This land cover database is provided as ESRI shape file (vector format) and derives from reprocessing the raster based Globcover database (regional version). Globcover has undergone the following process: a) vectoralization at the national extent using ESRI ArcGis (arcinfo) 9.3; b) topological reconstruction (custom AML scripts launched inside ArcGis-arcinfo 9.3); c) simplification of areas according to a minimum mapping unit of 0.1 skim (10 ha) (custom AML scripts launched inside ArcGis-arcinfo 9.3); application of the FAO/UNEP Land Cover Classification System (LCCS) legend (46 classes); final processing to assure full compatibility with the GLCN software Advanced Database Gateway (ADG).

    Online resources:

    Download - Land cover of Liberia - Shape file format

    GLOBCOVER on the ESA Web site

    Global Land Cover Network - GLCN

  18. DB INSPIRE MarkerPost

    • utilities-esri-de-content.hub.arcgis.com
    • opendataportal-esri-konferenz-esri-training.opendata.arcgis.com
    • +4more
    Updated Jul 27, 2018
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    Esri Deutschland (2018). DB INSPIRE MarkerPost [Dataset]. https://utilities-esri-de-content.hub.arcgis.com/datasets/db-inspire-markerpost/api
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    Dataset updated
    Jul 27, 2018
    Dataset provided by
    Esrihttp://esri.com/
    Authors
    Esri Deutschland
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Area covered
    Description

    DB_Netz_INSPIRE_20131128_MarkerPost

  19. a

    11.2 ArcGIS Pro: Using Imagery

    • hub.arcgis.com
    • training-iowadot.opendata.arcgis.com
    Updated Mar 3, 2017
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    Iowa Department of Transportation (2017). 11.2 ArcGIS Pro: Using Imagery [Dataset]. https://hub.arcgis.com/documents/55d6890c874b44719bb3b34321bea385
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    Dataset updated
    Mar 3, 2017
    Dataset authored and provided by
    Iowa Department of Transportation
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    Video based training seminar.

  20. a

    10.6 Inform and Engage Your Audience with Esri Story Maps

    • training-iowadot.opendata.arcgis.com
    • hub.arcgis.com
    Updated Mar 3, 2017
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    Iowa Department of Transportation (2017). 10.6 Inform and Engage Your Audience with Esri Story Maps [Dataset]. https://training-iowadot.opendata.arcgis.com/documents/cde9e31d9630497b889ba54350483c8c
    Explore at:
    Dataset updated
    Mar 3, 2017
    Dataset authored and provided by
    Iowa Department of Transportation
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    Story Maps enable you to harness the power of maps and geography to tell stories that will engage and inspire your audience. Story Maps are web applications you can create with ArcGIS that let you combine interactive maps with narrative text, photos, and other media.

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Esri (2019). Esri Maps for Public Policy [Dataset]. https://california-smart-climate-housing-growth-usfca.hub.arcgis.com/datasets/esri::esri-maps-for-public-policy
Organization logo

Esri Maps for Public Policy

Explore at:
Dataset updated
Oct 1, 2019
Dataset authored and provided by
Esrihttp://esri.com/
Description

OVERVIEWThis site is dedicated to raising the level of spatial and data literacy used in public policy. We invite you to explore curated content, training, best practices, and datasets that can provide a baseline for your research, analysis, and policy recommendations. Learn about emerging policy questions and how GIS can be used to help come up with solutions to those questions.EXPLOREGo to your area of interest and explore hundreds of maps about various topics such as social equity, economic opportunity, public safety, and more. Browse and view the maps, or collect them and share via a simple URL. Sharing a collection of maps is an easy way to use maps as a tool for understanding. Help policymakers and stakeholders use data as a driving factor for policy decisions in your area.ISSUESBrowse different categories to find data layers, maps, and tools. Use this set of content as a driving force for your GIS workflows related to policy. RESOURCESTo maximize your experience with the Policy Maps, we’ve assembled education, training, best practices, and industry perspectives that help raise your data literacy, provide you with models, and connect you with the work of your peers.

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