Robust fusion algorithms for unsupervised change detection between multi-band optical images - A comprehensive case study
Vinicius Ferraris, Nicolas Dobigeon, Marie Chabert

TL;DR
This paper introduces a robust fusion-based method for unsupervised change detection between multi-band optical images with different resolutions, addressing a broad range of scenarios including real-world applications.
Contribution
It proposes a novel framework modeling images as degraded versions of high-resolution latent images, enabling change detection across diverse sensor resolutions.
Findings
Outperforms state-of-the-art methods in accuracy
Effective in real multi-band optical image scenarios
Handles various spatial and spectral resolution disparities
Abstract
Unsupervised change detection techniques are generally constrained to two multi-band optical images acquired at different times through sensors sharing the same spatial and spectral resolution. This scenario is suitable for a straight comparison of homologous pixels such as pixel-wise differencing. However, in some specific cases such as emergency situations, the only available images may be those acquired through different kinds of sensors with different resolutions. Recently some change detection techniques dealing with images with different spatial and spectral resolutions, have been proposed. Nevertheless, they are focused on a specific scenario where one image has a high spatial and low spectral resolution while the other has a low spatial and high spectral resolution. This paper addresses the problem of detecting changes between any two multi-band optical images disregarding their…
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