Back to Search Start Over

Self-Configuring nnU-Nets Detect Clouds in Satellite Images

Authors :
Grabowski, Bartosz
Ziaja, Maciej
Kawulok, Michal
Longépé, Nicolas
Saux, Bertrand Le
Nalepa, Jakub
Publication Year :
2022

Abstract

Cloud detection is a pivotal satellite image pre-processing step that can be performed both on the ground and on board a satellite to tag useful images. In the latter case, it can help to reduce the amount of data to downlink by pruning the cloudy areas, or to make a satellite more autonomous through data-driven acquisition re-scheduling of the cloudy areas. We approach this important task with nnU-Nets, a self-reconfigurable framework able to perform meta-learning of a segmentation network over various datasets. Our experiments, performed over Sentinel-2 and Landsat-8 multispectral images revealed that nnU-Nets deliver state-of-the-art cloud segmentation performance without any manual design. Our approach was ranked within the top 7% best solutions (across 847 participating teams) in the On Cloud N: Cloud Cover Detection Challenge, where we reached the Jaccard index of 0.882 over more than 10k unseen Sentinel-2 image patches (the winners obtained 0.897, whereas the baseline U-Net with the ResNet-34 backbone used as an encoder: 0.817, and the classic Sentinel-2 image thresholding: 0.652).

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2210.13659
Document Type :
Working Paper