Self-Supervised Angular Deblurring in Photoacoustic Reconstruction via Noisier2Inverse
arXiv cs.CV / 4/20/2026
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Key Points
- Photoacoustic tomography (PAT) reconstruction is degraded by finite-size detector effects, which cause systematic blur when using standard fast methods like Fourier techniques, filtered backprojection, or time reversal.
- The paper introduces a self-supervised PAT reconstruction approach based on Noisier2Inverse that removes the need for ground-truth images, learning directly from noisy measurements.
- The method reframes reconstruction as angular deblurring using PAT-specific modeling, then applies a Noisier2Inverse formulation in the polar domain with the known angular point-spread function.
- It introduces a new statistically grounded early-stopping rule to improve training/reconstruction reliability.
- Experiments show consistent gains over other approaches that do not rely on supervised data, reaching performance close to supervised benchmarks while staying practical for real finite-detector acquisitions.
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