Compressive sensing inspired self-supervised single-pixel imaging
arXiv cs.CV / 4/1/2026
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Key Points
- The paper introduces SISTA-Net, a compressive sensing-inspired self-supervised approach for single-pixel imaging that addresses prior methods’ lack of physical sparsity constraints and insufficient use of both local and global features.
- SISTA-Net is built by unfolding the ISTA algorithm into an interpretable network with a data-fidelity module and a proximal-mapping module, where the fidelity stage uses a hybrid CNN–Visual State Space Model (VSSM) to improve reconstruction fidelity.
- The method uses deep nonlinear adaptive sparse transforms plus a learnable soft-thresholding operator to impose explicit physical sparsity in the latent domain, improving noise suppression and robustness at very low sampling rates.
- Experiments across multiple simulations show an average performance gain of 2.6 dB PSNR over state-of-the-art methods, and real-world far-field underwater tests report a 3.4 dB average PSNR improvement, supporting its anti-interference capability.
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