Self-supervised conformal prediction for uncertainty quantification in Poisson imaging problems
Journal:
arXiv
Published Date:
Feb 26, 2025
Abstract
Image restoration problems are often ill-posed, leading to significant
uncertainty in reconstructed images. Accurately quantifying this uncertainty is
essential for the reliable interpretation of reconstructed images. However,
image restoration methods often lack uncertainty quantification capabilities.
Conformal prediction offers a rigorous framework to augment image restoration
methods with accurate uncertainty quantification estimates, but it typically
requires abundant ground truth data for calibration. This paper presents a
self-supervised conformal prediction method for Poisson imaging problems which
leverages Poisson Unbiased Risk Estimator to eliminate the need for ground
truth data. The resulting self-calibrating conformal prediction approach is
applicable to any Poisson linear imaging problem that is ill-conditioned, and
is particularly effective when combined with modern self-supervised image
restoration techniques trained directly on measurement data. The proposed
method is demonstrated through numerical experiments on image denoising and
deblurring; its performance are comparable to supervised conformal prediction
methods relying on ground truth data.