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arxiv: 2605.24716 · v1 · pith:OG6LCDU5new · submitted 2026-05-23 · 💻 cs.CV · eess.SP

Physics-Guided Self-Supervised Statistical Residual Learning for Sonar Despeckling with Improved Generalization

classification 💻 cs.CV eess.SP
keywords despecklingresidualsonarself-supervisedspecklestatisticalstructuralwhile
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This letter introduces a physics-informed self-supervised framework for sonar image despeckling that reformulates despeckling as residual consistency in the homomorphic log domain. By constraining the log-ratio residual to obey multiplicative speckle statistics, the proposed method eliminates the need for clean supervision while preventing degenerate identity solutions. A variance-targeted statistical loss combined with edge-aware structural regularization and median-guided curriculum stabilization enables effective speckle suppression with preserved structural fidelity. This formulation along with a lightweight neural network achieves state-of-the-art performance across multiple real sonar datasets and demonstrates excellent cross-dataset robustness, while remaining suitable for real-time deployment.

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