Reconstruction of Sentinel-2 Time Series Using Robust Gaussian Mixture Models -- Application to the Detection of Anomalous Crop Development in wheat and rapeseed crops
Florian Mouret, Mohanad Albughdadi, Sylvie Duthoit, Denis Kouam\'e,, Guillaume Rieu, Jean-Yves Tourneret

TL;DR
This paper introduces a robust Gaussian Mixture Model approach for reconstructing missing multispectral and SAR data in Sentinel-2 imagery, enhancing crop monitoring accuracy especially in contaminated datasets.
Contribution
It develops a robust GMM method with outlier weighting for improved data imputation in remote sensing, integrating Sentinel-1 SAR features for better reconstruction.
Findings
Robust GMM outperforms other methods in reconstruction accuracy.
Achieved low MAE of 0.013 for rapeseed NDVI.
Effective in contaminated datasets with outliers.
Abstract
Missing data is a recurrent problem in remote sensing, mainly due to cloud coverage for multispectral images and acquisition problems. This can be a critical issue for crop monitoring, especially for applications relying on machine learning techniques, which generally assume that the feature matrix does not have missing values. This paper proposes a Gaussian Mixture Model (GMM) for the reconstruction of parcel-level features extracted from multispectral images. A robust version of the GMM is also investigated, since datasets can be contaminated by inaccurate samples or features (e.g., wrong crop type reported, inaccurate boundaries, undetected clouds, etc). Additional features extracted from Synthetic Aperture Radar (SAR) images using Sentinel-1 data are also used to provide complementary information and improve the imputations. The robust GMM investigated in this work assigns reduced…
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Taxonomy
TopicsRemote Sensing in Agriculture · Spectroscopy and Chemometric Analyses · Remote-Sensing Image Classification
