SPLIT: Self-supervised Partitioning for Learned Inversion in Nonlinear Tomography

arXiv cs.CV / 4/20/2026

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Key Points

  • The paper presents SPLIT, a self-supervised machine-learning framework for nonlinear tomography that can reconstruct images from incomplete, noisy projection data without ground-truth images.
  • SPLIT uses cross-partition consistency and measurement-domain fidelity, leveraging complementary information across multiple partitions to improve reconstruction quality.
  • The authors prove that, under mild assumptions, the self-supervised training objective is equivalent to the supervised counterpart in expectation.
  • Training is regularized with an automatic early-stopping rule based on a no-reference image-quality surrogate that stops when performance saturates.
  • Experiments on sparse-view multispectral computed tomography show SPLIT variants outperform classical iterative reconstruction and recent self-supervised baselines in reconstruction quality and noise robustness.

Abstract

Machine learning has achieved impressive performance in tomographic reconstruction, but supervised training requires paired measurements and ground-truth images that are often unavailable. This has motivated self-supervised approaches, which have primarily addressed denoising and, more recently, linear inverse problems. We address nonlinear inverse problems and introduce SPLIT (Self-supervised Partitioning for Learned Inversion in Nonlinear Tomography), a self-supervised machine-learning framework for reconstructing images from nonlinear, incomplete, and noisy projection data without any samples of ground-truth images. SPLIT enforces cross-partition consistency and measurement-domain fidelity while exploiting complementary information across multiple partitions. Our main theoretical result shows that, under mild conditions, the proposed self-supervised objective is equivalent to its supervised counterpart in expectation. We regularize training with an automatic stopping rule that halts optimization when a no-reference image-quality surrogate saturates. As a concrete application, we derive SPLIT variants for multispectral computed tomography. Experiments on sparse-view acquisitions demonstrate high reconstruction quality and robustness to noise, surpassing classical iterative reconstruction and recent self-supervised baselines.