4.7 Article

Towards global flood mapping onboard low cost satellites with machine learning

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SCIENTIFIC REPORTS
卷 11, 期 1, 页码 -

出版社

NATURE PORTFOLIO
DOI: 10.1038/s41598-021-86650-z

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资金

  1. European Space Agency (ESA)
  2. Google LLC
  3. Intel Corporation
  4. Kellogg College, University of Oxford
  5. UNICEF
  6. Spanish Ministry of Science and Innovation [TEC2016-77741-R, PID2019-109026RB-I00]
  7. EPSRC Grant [EP/L016427/1]
  8. Financial Times
  9. EPSRC/MURI Grant [EP/N019474/1]
  10. Lawrence Berkeley National Lab
  11. STFC/GCRF Grant [ST/R002673/1]
  12. EPSRC [EP/N019474/1] Funding Source: UKRI

向作者/读者索取更多资源

Spaceborne Earth observation technology provides valuable information for flood response; large constellations of small satellites can reduce revisit time in disaster areas; onboard processing helps reduce data transmission, with PhiSat-1 mission demonstrating hardware support for this approach.
Spaceborne Earth observation is a key technology for flood response, offering valuable information to decision makers on the ground. Very large constellations of small, nano satellites- 'CubeSats' are a promising solution to reduce revisit time in disaster areas from days to hours. However, data transmission to ground receivers is limited by constraints on power and bandwidth of CubeSats. Onboard processing offers a solution to decrease the amount of data to transmit by reducing large sensor images to smaller data products. The ESA's recent PhiSat-1 mission aims to facilitate the demonstration of this concept, providing the hardware capability to perform onboard processing by including a power-constrained machine learning accelerator and the software to run custom applications. This work demonstrates a flood segmentation algorithm that produces flood masks to be transmitted instead of the raw images, while running efficiently on the accelerator aboard the PhiSat-1. Our models are trained on WorldFloods: a newly compiled dataset of 119 globally verified flooding events from disaster response organizations, which we make available in a common format. We test the system on independent locations, demonstrating that it produces fast and accurate segmentation masks on the hardware accelerator, acting as a proof of concept for this approach.

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