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.

Abstract

Single-pixel imaging (SPI) is a promising imaging modality with distinctive advantages in strongly perturbed environments. Existing SPI methods lack physical sparsity constraints and overlook the integration of local and global features, leading to severe noise vulnerability, structural distortions and blurred details. To address these limitations, we propose SISTA-Net, a compressive sensing-inspired self-supervised method for single-pixel imaging. SISTA-Net unfolds the Iterative Shrinkage-Thresholding Algorithm (ISTA) into an interpretable network consisting of a data fidelity module and a proximal mapping module. The fidelity module adopts a hybrid CNN-Visual State Space Model (VSSM) architecture to integrate local and global feature modeling, enhancing reconstruction integrity and fidelity. We leverage deep nonlinear networks as adaptive sparse transforms combined with a learnable soft-thresholding operator to impose explicit physical sparsity in the latent domain, enabling noise suppression and robustness to interference even at extremely low sampling rates. Extensive experiments on multiple simulation scenarios demonstrate that SISTA-Net outperforms state-of-the-art methods by 2.6 dB in PSNR. Real-world far-field underwater tests yield a 3.4 dB average PSNR improvement, validating its robust anti-interference capability.