Deep Equilibrium Convolutional Sparse Coding for Hyperspectral Image Denoising

Jin Ye, Jingran Wang, Fengchao Xiong, Jingzhou Chen, Yuntao Qian

Published: 01 Jan 2025, Last Modified: 06 Nov 2025IEEE Transactions on Geoscience and Remote SensingEveryoneRevisionsCC BY-SA 4.0
Abstract: Hyperspectral images (HSIs) play a crucial role in remote sensing but are often degraded by complex noise patterns. Ensuring the physical property of the denoised HSIs is vital for robust HSI denoising, giving the rise of deep unfolding-based methods. However, these methods map the optimization of a physical model to a learnable network with a predefined depth, which lacks convergence guarantees. In contrast, deep equilibrium (DEQ) models treat the hidden layers of deep networks as the solution to a fixed-point problem and models them as infinite-depth networks, naturally consistent with the optimization. Under the framework of DEQ, we propose a deep equilibrium convolutional sparse coding (DECSC) framework that unifies local spatial–spectral correlations, nonlocal spatial self-similarities, and global spatial consistency for robust HSI denoising. Within the convolutional sparse coding (CSC) framework, we enforce shared 2-D convolutional sparse representation to ensure global spatial consistency across bands, while unshared 3-D convolutional sparse representation captures local spatial–spectral details. To further exploit nonlocal self-similarities, a transformer block is embedded after the 2-D CSC. In addition, a detail enhancement module is integrated with the 3-D CSC to promote image detail preservation. We formulate the proximal gradient descent of the CSC model as a fixed-point problem and transform the iterative updates into a learnable network architecture within the framework of DEQ. Experimental results demonstrate that our DECSC method achieves superior denoising performance compared to state-of-the-art methods.
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