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hurricane_fiona_2022/aria_dpm_sentinel1_20220919 (ImageServer)

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Service Description:

Date of Image:

9/19/2022

Date of Next Image:

Unknown

Summary:

The Advanced Rapid Imaging and Analysis (ARIA) team at NASA's Jet Propulsion Laboratory and California Institute of Technology created the multi-temporal coherence-based Damage Proxy Map (DPM2) depicting areas that are likely damaged in Puerto Rico due to the Hurricane Fiona in September 2022. This map was derived from synthetic aperture radar (SAR) images acquired by the Copernicus Sentinel-1 satellites operated by the European Space Agency (ESA) images on September 19, 2022 at about 6 AM local time. The pre-event reference images were taken between Jan. 10 and Sep. 7, 2022. before the hurricane hit land.

Suggested Use:

The color variation from pale yellow to red indicates increasingly more significant surface change (drop in radar reflection coherence). Preliminary validation was done by comparing with the Media reports and other images.

This damage proxy map should be used as guidance to identify damaged areas or areas affected by flood and may be less reliable over vegetated areas. The changes in radar reflections from flooded land and damaged buildings cannot be separated easily. For example, the scattered colored pixels over vegetated areas may be false positives, and the lack of colored pixels over vegetated areas does not necessarily mean no damage.

Satellite/Sensor:

Copernicus Sentinel-1 Synthetic Aperture Radar (SAR)

Resolution:

30 meters

Credits:

Sentinel-1 data were accessed through the Copernicus Open Hub and the Alaska Satellite Facility server. The product contains modified Copernicus Sentinel data (2022), processed by ESA and analyzed by the NASA-JPL/Caltech ARIA team. NASA's Earth Applied Sciences Disasters Program provided part of the funding.

For more information about ARIA, visit: http://aria.jpl.nasa.gov

Esri REST Endpoint:

See URL section on right side of page

WMS Endpoint:

Data Download:

https://aria-share.jpl.nasa.gov/20220918-Hurricane_Puerto_Rico/DPM/



Name: hurricane_fiona_2022/aria_dpm_sentinel1_20220919

Description:

Date of Image:

9/19/2022

Date of Next Image:

Unknown

Summary:

The Advanced Rapid Imaging and Analysis (ARIA) team at NASA's Jet Propulsion Laboratory and California Institute of Technology created the multi-temporal coherence-based Damage Proxy Map (DPM2) depicting areas that are likely damaged in Puerto Rico due to the Hurricane Fiona in September 2022. This map was derived from synthetic aperture radar (SAR) images acquired by the Copernicus Sentinel-1 satellites operated by the European Space Agency (ESA) images on September 19, 2022 at about 6 AM local time. The pre-event reference images were taken between Jan. 10 and Sep. 7, 2022. before the hurricane hit land.

Suggested Use:

The color variation from pale yellow to red indicates increasingly more significant surface change (drop in radar reflection coherence). Preliminary validation was done by comparing with the Media reports and other images.

This damage proxy map should be used as guidance to identify damaged areas or areas affected by flood and may be less reliable over vegetated areas. The changes in radar reflections from flooded land and damaged buildings cannot be separated easily. For example, the scattered colored pixels over vegetated areas may be false positives, and the lack of colored pixels over vegetated areas does not necessarily mean no damage.

Satellite/Sensor:

Copernicus Sentinel-1 Synthetic Aperture Radar (SAR)

Resolution:

30 meters

Credits:

Sentinel-1 data were accessed through the Copernicus Open Hub and the Alaska Satellite Facility server. The product contains modified Copernicus Sentinel data (2022), processed by ESA and analyzed by the NASA-JPL/Caltech ARIA team. NASA's Earth Applied Sciences Disasters Program provided part of the funding.

For more information about ARIA, visit: http://aria.jpl.nasa.gov

Esri REST Endpoint:

See URL section on right side of page

WMS Endpoint:

Data Download:

https://aria-share.jpl.nasa.gov/20220918-Hurricane_Puerto_Rico/DPM/



Single Fused Map Cache: false

Extent: Initial Extent: Full Extent: Pixel Size X: 2.777777777777768E-4

Pixel Size Y: 2.7777777767220896E-4

Band Count: 4

Pixel Type: U8

RasterFunction Infos: {"rasterFunctionInfos": [ { "name": "ARIA Damage Proxy Map (DPM)", "description": "To be used only with ARIA DPMs. Yellow to red indicates increasingly more significant surface change.", "help": "" }, { "name": "None", "description": "Make a Raster or Raster Dataset into a Function Raster Dataset.", "help": "" } ]}

Mensuration Capabilities: Basic

Has Histograms: true

Has Colormap: false

Has Multi Dimensions : false

Rendering Rule:

Min Scale: 0

Max Scale: 0

Copyright Text: NASA-JPL/Caltech ARIA Team, ESA, Copernicus

Service Data Type: esriImageServiceDataTypeGeneric

Min Values: 0, 0, 0, 0

Max Values: 255, 255, 0, 255

Mean Values: 2.8706655484412, 1.3225248948312, 0, 3.079999039607

Standard Deviation Values: 26.222575759537, 15.916682905982, 0, 27.855221950271

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: Nearest

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: Has Raster Attribute Table: false

Edit Fields Info: null

Ownership Based AccessControl For Rasters: null

Child Resources:   Info   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