Unsupervised Pansharpening Based on Self-Attention Mechanism
Ying Qu, Razieh Kaviani Baghbaderani, Hairong Qi, Chiman Kwan

TL;DR
This paper introduces an unsupervised deep learning method using self-attention for pansharpening, effectively reconstructing high-resolution multispectral images with improved detail and spectral fidelity at the sub-pixel level.
Contribution
It proposes a novel self-attention mechanism and stacked attention network with a stick-breaking structure for unsupervised pansharpening, addressing spectral distortion and mixed pixel challenges.
Findings
Reconstructs sharper MSI with more details
Achieves less spectral distortion
Outperforms state-of-the-art methods
Abstract
Pansharpening is to fuse a multispectral image (MSI) of low-spatial-resolution (LR) but rich spectral characteristics with a panchromatic image (PAN) of high-spatial-resolution (HR) but poor spectral characteristics. Traditional methods usually inject the extracted high-frequency details from PAN into the up-sampled MSI. Recent deep learning endeavors are mostly supervised assuming the HR MSI is available, which is unrealistic especially for satellite images. Nonetheless, these methods could not fully exploit the rich spectral characteristics in the MSI. Due to the wide existence of mixed pixels in satellite images where each pixel tends to cover more than one constituent material, pansharpening at the subpixel level becomes essential. In this paper, we propose an unsupervised pansharpening (UP) method in a deep-learning framework to address the above challenges based on the…
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