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Service Description: High resolution land cover dataset for Virginia Beach, Virginia (vector format produced from 0.5 Foot raster land cover). Seven land cover classes were mapped: (1) tree canopy, (2) grass/shrub, (3) bare earth, (4) water, (5) buildings, (6) roads, and (7) other paved surfaces. The primary sources used to derive this land cover layer were 2024 LiDAR data and 2023 NAIP imagery. Ancillary data sources included GIS data provided by Virginia Beach, Virginia or created by the UVM Spatial Analysis Laboratory. Object-based image analysis techniques (OBIA) were employed to extract land cover information using the best available remotely sensed and vector GIS datasets. OBIA systems work by grouping pixels into meaningful objects based on their spectral and spatial properties, while taking into account boundaries imposed by existing vector datasets. Within the OBIA environment a rule-based expert system was designed to effectively mimic the process of manual image analysis by incorporating the elements of image interpretation (color/tone, texture, pattern, location, size, and shape) into the classification process. A series of morphological procedures were employed to insure that the end product is both accurate and cartographically pleasing. Following the automated OBIA mapping a detailed manual review of the dataset was carried out at a scale of 2500 and all observable errors were corrected.
Name: Land_Cover/Land_Cover_2024
Description: High resolution land cover dataset for Virginia Beach, Virginia (vector format produced from 0.5 Foot raster land cover). Seven land cover classes were mapped: (1) tree canopy, (2) grass/shrub, (3) bare earth, (4) water, (5) buildings, (6) roads, and (7) other paved surfaces. The primary sources used to derive this land cover layer were 2024 LiDAR data and 2023 NAIP imagery. Ancillary data sources included GIS data provided by Virginia Beach, Virginia or created by the UVM Spatial Analysis Laboratory. Object-based image analysis techniques (OBIA) were employed to extract land cover information using the best available remotely sensed and vector GIS datasets. OBIA systems work by grouping pixels into meaningful objects based on their spectral and spatial properties, while taking into account boundaries imposed by existing vector datasets. Within the OBIA environment a rule-based expert system was designed to effectively mimic the process of manual image analysis by incorporating the elements of image interpretation (color/tone, texture, pattern, location, size, and shape) into the classification process. A series of morphological procedures were employed to insure that the end product is both accurate and cartographically pleasing. Following the automated OBIA mapping a detailed manual review of the dataset was carried out at a scale of 2500 and all observable errors were corrected.
Single Fused Map Cache: false
Extent:
XMin: 1.2147779080557063E7
YMin: 3368711.354821831
XMax: 1.2256113080557063E7
YMax: 3508438.854821831
Spatial Reference: 103177
(6595)
LatestVCSWkid(0)
Initial Extent:
XMin: 1.2147779080557063E7
YMin: 3368711.354821831
XMax: 1.2256113080557063E7
YMax: 3508438.854821831
Spatial Reference: 103177
(6595)
LatestVCSWkid(0)
Full Extent:
XMin: 1.2147779080557063E7
YMin: 3368711.354821831
XMax: 1.2256113080557063E7
YMax: 3508438.854821831
Spatial Reference: 103177
(6595)
LatestVCSWkid(0)
Pixel Size X: 0.5
Pixel Size Y: 0.5
Band Count: 1
Pixel Type: U8
RasterFunction Infos: {"rasterFunctionInfos": [
{
"name": "Land_Cover_2009_Symbolized",
"description": "Land_Cover_2009_Symbolized",
"help": ""
},
{
"name": "None",
"description": "Make a Raster or Raster Dataset into a Function Raster Dataset.",
"help": ""
}
]}
Mensuration Capabilities: Basic
Inspection Capabilities:
Has Histograms: true
Has Colormap: false
Has Multi Dimensions : false
Rendering Rule:
Min Scale: 0
Max Scale: 0
Copyright Text: University of Vermont Spatial Analysis Laboratory in collaboration with Virginia Beach.
Service Data Type: esriImageServiceDataTypeGeneric
Min Values: 0
Max Values: 7
Mean Values: 1.557072038161
Standard Deviation Values: 1.9399812438009
Object ID Field:
Fields:
None
Default Mosaic Method: Center
Allowed Mosaic Methods:
SortField:
SortValue: null
Mosaic Operator: First
Default Compression Quality: 75
Default Resampling Method: Bilinear
Max Record Count: null
Max Image Height: 4100
Max Image Width: 15000
Max Download Image Count: null
Max Mosaic Image Count: null
Allow Raster Function: true
Allow Copy: true
Allow Analysis: true
Allow Compute TiePoints: false
Supports Statistics: false
Supports Advanced Queries: false
Use StandardizedQueries: true
Raster Type Infos:
Name: Raster Dataset
Description: Supports all ArcGIS Raster Datasets
Help:
Has Raster Attribute Table: true
Edit Fields Info: null
Ownership Based AccessControl For Rasters: null
Child Resources:
Info
Raster Attribute Table
Histograms
Statistics
Key Properties
Legend
Raster Function Infos
Supported Operations:
Export Image
Identify
Measure
Compute Histograms
Compute Statistics Histograms
Get Samples
Compute Class Statistics
Query Boundary
Compute Pixel Location
Compute Angles
Validate
Project