M3SR: Multi-Scale Multi-Perceptual Mamba for Efficient Spectral Reconstruction
By: Yuze Zhang , Lingjie Li , Qiuzhen Lin and more
The Mamba architecture has been widely applied to various low-level vision tasks due to its exceptional adaptability and strong performance. Although the Mamba architecture has been adopted for spectral reconstruction, it still faces the following two challenges: (1) Single spatial perception limits the ability to fully understand and analyze hyperspectral images; (2) Single-scale feature extraction struggles to capture the complex structures and fine details present in hyperspectral images. To address these issues, we propose a multi-scale, multi-perceptual Mamba architecture for the spectral reconstruction task, called M3SR. Specifically, we design a multi-perceptual fusion block to enhance the ability of the model to comprehensively understand and analyze the input features. By integrating the multi-perceptual fusion block into a U-Net structure, M3SR can effectively extract and fuse global, intermediate, and local features, thereby enabling accurate reconstruction of hyperspectral images at multiple scales. Extensive quantitative and qualitative experiments demonstrate that the proposed M3SR outperforms existing state-of-the-art methods while incurring a lower computational cost.
Similar Papers
MFmamba: A Multi-function Network for Panchromatic Image Resolution Restoration Based on State-Space Model
CV and Pattern Recognition
Makes blurry satellite pictures sharp and colorful.
Efficient Vision Mamba for MRI Super-Resolution via Hybrid Selective Scanning
CV and Pattern Recognition
Makes MRI scans clearer and faster for doctors.
Guided Depth Map Super-Resolution via Multi-Scale Fusion U-shaped Mamba Network
CV and Pattern Recognition
Makes blurry depth pictures sharp and clear.