The paper introduces the Spatial-Spectral U-Mamba (SSUMamba) model for efficient hyperspectral image (HSI) denoising. The key highlights are:
The linear complexity of the Selective State Space Model (SSM) allows the SSUMamba to model the global spatial-spectral correlation in HSIs, which is crucial for effective denoising.
To address the difference between image and sequence data, the authors introduce the Vision Mamba (VMamba) block, which incorporates residual blocks and a bidirectional Mamba layer to enhance local texture exploration and avoid unidirectional dependency.
The Spatial-Spectral Alternating Scan (SSAS) strategy is proposed to enable the VMamba blocks to exploit global spatial-spectral correlation in all directions, effectively capturing the 3D characteristics of HSIs.
The SSUMamba model is built upon the VMamba blocks with SSAS in a U-shaped network architecture, allowing for multi-scale feature extraction and reconstruction.
Experiments on the ICVL and Houston 2018 HSI datasets demonstrate that the SSUMamba outperforms several state-of-the-art model-based and deep learning-based methods, especially in capturing global spatial-spectral correlation and handling mixed noise scenarios.
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by Guanyiman Fu... às arxiv.org 05-06-2024
https://arxiv.org/pdf/2405.01726.pdfPerguntas Mais Profundas