4 datasets found
  1. a

    Mapping Control

    • hub.arcgis.com
    • montana-state-library-2022-floods-gis-data-hub-montana.hub.arcgis.com
    Updated Feb 1, 2017
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    Montana Geographic Information (2017). Mapping Control [Dataset]. https://hub.arcgis.com/maps/montana::mapping-control-1
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    Dataset updated
    Feb 1, 2017
    Dataset authored and provided by
    Montana Geographic Information
    Area covered
    Description

    The Mapping Control Database (MCPD) is a database of mapping control covering Montana. The control were submitted by registered land surveyors or mapping professionals.

    Full metadata available at https://mslservices.mt.gov/Geographic_Information/Data/DataList/datalist_Details.aspx?did=62c565ec-de6e-11e6-bf01-fe55135034f3.

  2. o

    Data from: The HOLC Maps: How Race and Poverty Influenced Real Estate...

    • openicpsr.org
    Updated Dec 29, 2022
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    Price Fishback; Jessica LaVoice; Allison Shertzer; Randall Walsh (2022). The HOLC Maps: How Race and Poverty Influenced Real Estate Professionals’ Evaluation of Lending Risk in the 1930s [Dataset]. http://doi.org/10.3886/E183722V1
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    Dataset updated
    Dec 29, 2022
    Dataset provided by
    University of Arizona, Stellenbosch University, and NBER
    Bowdoin College
    University of Pittsburgh and NBER
    Authors
    Price Fishback; Jessica LaVoice; Allison Shertzer; Randall Walsh
    License

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

    Description

    This is the replication package for "The HOLC Maps: How Race and Poverty Influenced Real Estate Professionals’ Evaluation of Lending Risk in the 1930s"

  3. Data from: Habitat mapping of coastal wetlands using expert knowledge and...

    • zenodo.org
    • data.niaid.nih.gov
    • +1more
    pdf, tiff
    Updated May 28, 2022
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    Maria Adamo; Cristina Tarantino; Valeria Tomaselli; Giuseppe Veronico; Harini Nagendra; Palma Blonda; Maria Adamo; Cristina Tarantino; Valeria Tomaselli; Giuseppe Veronico; Harini Nagendra; Palma Blonda (2022). Data from: Habitat mapping of coastal wetlands using expert knowledge and Earth observation data [Dataset]. http://doi.org/10.5061/dryad.9h9q2
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    tiff, pdfAvailable download formats
    Dataset updated
    May 28, 2022
    Dataset provided by
    Zenodohttp://zenodo.org/
    Authors
    Maria Adamo; Cristina Tarantino; Valeria Tomaselli; Giuseppe Veronico; Harini Nagendra; Palma Blonda; Maria Adamo; Cristina Tarantino; Valeria Tomaselli; Giuseppe Veronico; Harini Nagendra; Palma Blonda
    License

    CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
    License information was derived automatically

    Area covered
    Earth
    Description

    Long-term habitat mapping and change detection are essential for the management of coastal wetlands as well as for evaluating the impact of conservation policies. Earth observation (EO) data and techniques are a valuable resource for long-term habitat mapping. Although the use of EO data is well developed for the automatic production of land cover (LC) maps, this is not the same for habitat maps, which are highly related to biodiversity. In a previous paper, we used the Food and Agricultural Organization (FAO) Land Cover Classification System (LCCS) environmental attributes (e.g. water quality, lithology, soil surface aspect) for LC-to-habitat class translation. However, these environmental attributes are often not openly available, not updated or are missing. This paper offers an alternative, knowledge-based solution to automatic habitat mapping. When only expert rules and EO data are used, the final overall map accuracy, which is obtained by comparing reference ground truth patches to the ones depicted in the output map, is lower (75·1%) than the accuracy obtained using environmental attributes alone (97·0%). Some ambiguities that still remain in habitat discrimination are resolved by integrating the use of LCCS environmental attributes (if available) and expert rules. In this paper, we use very high-resolution (VHR) satellite data and LIDAR data. LC classes are labelled according to the LCCS taxonomy, which offers a framework to integrate EO data with in situ and ancillary data. Output habitat classes are labelled according to the European Habitats Directive (92/43 EEC Directive) Annex I habitat types and Eunis habitat classification. Two Natura 2000 coastal wetland sites in southern Italy are considered. Synthesis and applications. In this paper, we study the exploitation of ecological rules on vegetation pattern, plant phenology and habitat geometric properties for automatic translation of land cover (LC) maps to habitat maps in coastal wetlands. The methodology is useful for relatively inaccessible sites (e.g. wetlands) as it does not require in-field campaigns (generally costly) but only the elicitation of ecological expert rules. This can support site (e.g. Natura 2000) managers in long-term automatic habitat mapping. Habitat changes can be automatically detected by comparing map pairs, and trends can be quantified. This is particularly useful to satisfy the commitments of the European Habitats Directive (92/43/EEC), which requires Member States to take measures to maintain as, or restore to, favourable conservation status those natural habitat types and species of community interest that are listed in the Annexes to the Directive.

  4. d

    Mapping the páramo land cover in the Northern Andes: Figure S4 Expert...

    • datadryad.org
    • zenodo.org
    zip
    Updated Nov 30, 2021
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    Gwendolyn Peyre (2021). Mapping the páramo land cover in the Northern Andes: Figure S4 Expert land-cover classification of the Andean páramo and distribution according to three groups: natural vegetation, natural abiotic and anthropogenic, and 12 classes [Dataset]. http://doi.org/10.5061/dryad.ns1rn8psm
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    zipAvailable download formats
    Dataset updated
    Nov 30, 2021
    Dataset provided by
    Dryad
    Authors
    Gwendolyn Peyre
    Time period covered
    Nov 19, 2021
    Area covered
    Andes
    Description

    This dataset corresponds to the expert classification results for the 2019 Land-cover classification of the Andean páramo.

    This dataset is presented in a raster format, with a pixel resolution of 1 arc second (30 m).

    It was obtained by conducting Maximum Likelihood and Random Forest classifications of Landsat 8 Imagery (2018-2019) for the páramo region. The obtained results were contrasted and validated to generate the expert classification, which was then cropped at the Andean forest - páramo treeline.

    Classes are coded as such: 1 - water, 2 - shrubland, 3 - forest, 4 - crop, 5 - desert, 6 - rosette, 7 - glacier, 8 - grassland, 9 - meadow, 10 - rock, 11 - periglacial desert, 12 - urban

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Montana Geographic Information (2017). Mapping Control [Dataset]. https://hub.arcgis.com/maps/montana::mapping-control-1

Mapping Control

Explore at:
Dataset updated
Feb 1, 2017
Dataset authored and provided by
Montana Geographic Information
Area covered
Description

The Mapping Control Database (MCPD) is a database of mapping control covering Montana. The control were submitted by registered land surveyors or mapping professionals.

Full metadata available at https://mslservices.mt.gov/Geographic_Information/Data/DataList/datalist_Details.aspx?did=62c565ec-de6e-11e6-bf01-fe55135034f3.

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