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Papers/UnCRtainTS: Uncertainty Quantification for Cloud Removal i...

UnCRtainTS: Uncertainty Quantification for Cloud Removal in Optical Satellite Time Series

Patrick Ebel, Vivien Sainte Fare Garnot, Michael Schmitt, Jan Dirk Wegner, Xiao Xiang Zhu

2023-04-11Uncertainty QuantificationCloud RemovalImage ReconstructionTime Series
PaperPDFCode

Abstract

Clouds and haze often occlude optical satellite images, hindering continuous, dense monitoring of the Earth's surface. Although modern deep learning methods can implicitly learn to ignore such occlusions, explicit cloud removal as pre-processing enables manual interpretation and allows training models when only few annotations are available. Cloud removal is challenging due to the wide range of occlusion scenarios -- from scenes partially visible through haze, to completely opaque cloud coverage. Furthermore, integrating reconstructed images in downstream applications would greatly benefit from trustworthy quality assessment. In this paper, we introduce UnCRtainTS, a method for multi-temporal cloud removal combining a novel attention-based architecture, and a formulation for multivariate uncertainty prediction. These two components combined set a new state-of-the-art performance in terms of image reconstruction on two public cloud removal datasets. Additionally, we show how the well-calibrated predicted uncertainties enable a precise control of the reconstruction quality.

Results

TaskDatasetMetricValueModel
Image GenerationSEN12MS-CR-TSPSNR27.23UnCRtainTS L2
Image GenerationSEN12MS-CR-TSRMSE0.049UnCRtainTS L2
Image GenerationSEN12MS-CR-TSSAM10.168UnCRtainTS L2
Image GenerationSEN12MS-CR-TSSSIM0.859UnCRtainTS L2
Image GenerationSEN12MS-CR-TSPSNR27.84UnCRtainTS σ
Image GenerationSEN12MS-CR-TSRMSE0.051UnCRtainTS σ
Image GenerationSEN12MS-CR-TSSAM10.16UnCRtainTS σ
Image GenerationSEN12MS-CR-TSSSIM0.866UnCRtainTS σ
Image GenerationSEN12MS-CRMAE0.027UnCRtainTS L2
Image GenerationSEN12MS-CRPSNR28.9UnCRtainTS L2
Image GenerationSEN12MS-CRSAM8.32UnCRtainTS L2
Image GenerationSEN12MS-CRSSIM0.88UnCRtainTS L2
Image InpaintingSEN12MS-CR-TSPSNR27.23UnCRtainTS L2
Image InpaintingSEN12MS-CR-TSRMSE0.049UnCRtainTS L2
Image InpaintingSEN12MS-CR-TSSAM10.168UnCRtainTS L2
Image InpaintingSEN12MS-CR-TSSSIM0.859UnCRtainTS L2
Image InpaintingSEN12MS-CR-TSPSNR27.84UnCRtainTS σ
Image InpaintingSEN12MS-CR-TSRMSE0.051UnCRtainTS σ
Image InpaintingSEN12MS-CR-TSSAM10.16UnCRtainTS σ
Image InpaintingSEN12MS-CR-TSSSIM0.866UnCRtainTS σ
Image InpaintingSEN12MS-CRMAE0.027UnCRtainTS L2
Image InpaintingSEN12MS-CRPSNR28.9UnCRtainTS L2
Image InpaintingSEN12MS-CRSAM8.32UnCRtainTS L2
Image InpaintingSEN12MS-CRSSIM0.88UnCRtainTS L2

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