DSCSNet: A Dynamic Sparse Compression Sensing Network for Closely-Spaced Infrared Small Target Unmixing

arXiv cs.CV / 3/24/2026

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Key Points

  • The paper introduces DSCSNet, a deep-unfolded dynamic sparse compressed sensing network designed for the Close Small Object Unmixing (CSOU) problem, where closely spaced infrared targets appear as mixed spots due to sensor and optics limits.
  • DSCSNet integrates ADMM with end-to-end learnable parameters, replacing traditional smoothness-promoting terms by embedding a strict \(\ell_1\)-norm sparsity constraint in the auxiliary-variable update to better preserve discrete target energy peaks.
  • It adds a self-attention-based dynamic thresholding mechanism in the reconstruction stage to adapt sparsification strength based on sparsity-relevant information produced across ADMM iterations.
  • The method is trained jointly across the three ADMM iterative steps, aiming to balance the sparsity guarantees of model-driven approaches with the adaptability of data-driven methods.
  • Experiments on the synthetic CSIST-100K dataset report improved performance over state of the art on metrics including CSO-mAP and sub-pixel localization error, indicating better accuracy and generalization in complex infrared scenarios.

Abstract

Due to the limitations of optical lens focal length and detector resolution, distant clustered infrared small targets often appear as mixed spots. The Close Small Object Unmixing (CSOU) task aims to recover the number, sub-pixel positions, and radiant intensities of individual targets from these spots, which is a highly ill-posed inverse problem. Existing methods struggle to balance the rigorous sparsity guarantees of model-driven approaches and the dynamic scene adaptability of data-driven methods. To address this dilemma, this paper proposes a Dynamic Sparse Compressed Sensing Network (DSCSNet), a deep-unfolded network that couples the Alternating Direction Method of Multipliers (ADMM) with learnable parameters. Specifically, we embed a strict \ell_1-norm sparsity constraint into the auxiliary variable update step of ADMM to replace the traditional \ell_2-norm smoothness-promoting terms, which effectively preserves the discrete energy peaks of small targets. We also integrate a self-attention-based dynamic thresholding mechanism into the reconstruction stage, which adaptively adjusts the sparsification intensity using the sparsity-enhanced information from the iterative process. These modules are jointly optimized end-to-end across the three iterative steps of ADMM. Retaining the physical logic of compressed sensing, DSCSNet achieves robust sparsity induction and scene adaptability, thus enhancing the unmixing accuracy and generalization in complex infrared scenarios. Extensive experiments on the synthetic infrared dataset CSIST-100K demonstrate that DSCSNet outperforms state-of-the-art methods in key metrics such as CSO-mAP and sub-pixel localization error.