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FloodPlanet: High-Resolution Commercial Imagery for Training and Validation of Deep Learning-Based Models of Inundation ExtentFlooding events are becoming increasingly frequent worldwide and are known to cause extensive damage. Public optical and radar satellite imagery can be used to detect large areas of inundation in rural areas, however, long revisit times and coarse spatial resolution limit applications for short-lived events and urban areas. Commercial constellations such as those operated by Planet offer increased spatial and temporal resolution and can supplement mapping efforts to provide more information to disaster response, relief, and mitigation efforts.
Deep learning requires high quality labeled data for training across coincident sensors. The FloodPlanet dataset presented here contains labeled surface water for 18 events across the world based on Planetscope imagery with coincident Harmonized Landsat Sentinel-2 ( HLS) or Sentinel-1 and builds upon the previously existing Sen1Floods11, xBD, and NASA Sentinel-1 datasets. Sen1Floods11 includes 4,831 512x512 pixel overlapping tiles of coincident Sentinel-1 and Sentinel-2 data observing 11 flood events across the world from 2017-2019. The dataset contains a combination of automated and hand-labeled surface water for use in training and validation of inundation modeling efforts. The xBD dataset identifies flood-damaged buildings and indicates the scale of damage to each (none, minor, moderate, and major) from four flood events which occurred in the United States, India, Nepal, and Bangladesh from the same time period. The NASA dataset contains hand-labeled water bodies observed in Sentinel-1 imagery during five flood events within the 2017-2019 period. The effort presented here utilizes observations from these previously investigated flood events to generate labels of surface water at the 3-5m spatial resolution provided by Planetscope and facilitate the comparison between public and commercial data.
A data pipeline was built which uses clustering algorithms to pick the most suitable overlapping chips between the public data and PlanetScope data for manual labeling. Labels were created manually using NASA’s ImageLabeler tool and include areas of high- and low-confidence water. The high confidence designation is reserved for areas of open, unobstructed water while low confidence is used for areas of suspected water beneath vegetation, clouds, or cloud shadows. Expected to be released in late 2022, the FloodPlanet dataset will include tiled imagery with a unique ID for each 1024x1024 pixel tile, 7 bands of HLS data, and high- and low-confidence flood labels in both shapefile and tiff formats. The authors will follow Spatial Temporal Access Catalog (STAC) guidelines to release FloodPlanet on the Radiant Earth ML hub, which hosts public datasets for machine learning.
Document ID
20220018303
Acquisition Source
Marshall Space Flight Center
Document Type
Presentation
Authors
Alexander Melancon
(University of Alabama in Huntsville Huntsville, Alabama, United States)
Jonathan Giezendanner
(University of Arizona Tucson, Arizona, United States)
Zhijie Zhang
(University of Arizona Tucson, Arizona, United States)
Rohit Mukherjee
(University of Arizona Tucson, Arizona, United States)
Iksha Gurung
(University of Alabama in Huntsville Huntsville, Alabama, United States)
Beth Tellman
(University of Arizona Tucson, Arizona, United States)
Andrew Molthan
(Marshall Space Flight Center Redstone Arsenal, Alabama, United States)
Date Acquired
December 2, 2022
Subject Category
Earth Resources and Remote Sensing
Meeting Information
Meeting: AGU Fall Meeting 2022
Location: Chicago, IL
Country: US
Start Date: December 12, 2022
End Date: December 16, 2022
Sponsors: American Geophysical Union
Funding Number(s)
CONTRACT_GRANT: 80NSSC21K1163
Distribution Limits
Public
Copyright
Use by or on behalf of the US Gov. Permitted.
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