U-TILISE: A Sequence-to-Sequence Model for Cloud Removal in Optical Satellite Time Series
Open access
Date
2023Type
- Journal Article
ETH Bibliography
yes
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Abstract
Satellite image time series in the optical and infrared spectrum suffer from frequent data gaps due to cloud cover, cloud shadows, and temporary sensor outages. It has been a long-standing problem of remote sensing research how to best reconstruct the missing pixel values and obtain complete, cloud-free image sequences. We approach that problem from the perspective of representation learning and develop U-TILISE, an efficient neural model that is able to implicitly capture spatio-temporal patterns of the spectral intensities, and that can therefore be trained to map a cloud-masked input sequence to a cloud-free output sequence. The model consists of a convolutional spatial encoder that maps each individual frame of the input sequence to a latent encoding; an attention-based temporal encoder that captures dependencies between those per-frame encodings and lets them exchange information along the time dimension; and a convolutional spatial decoder that decodes the latent embeddings back into multi-spectral images. We experimentally evaluate the proposed model on EarthNet2021, a dataset of Sentinel-2 time series acquired all over Europe, and demonstrate its superior ability to reconstruct the missing pixels. Compared to a standard interpolation baseline, it increases the PSNR by 1.8 dB at previously seen locations and by 1.3 dB at unseen locations. Show more
Permanent link
https://doi.org/10.3929/ethz-b-000645462Publication status
publishedExternal links
Journal / series
IEEE Transactions on Geoscience and Remote SensingVolume
Pages / Article No.
Publisher
IEEESubject
Cloud removal; Image time series reconstruction; Self-attention; Sentinel-2; Sequence-to-sequence modelOrganisational unit
03886 - Schindler, Konrad / Schindler, Konrad
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ETH Bibliography
yes
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