Hypothesis Testing in Imaging Inverse Problems
Journal:
arXiv
Published Date:
May 28, 2025
Abstract
This paper proposes a framework for semantic hypothesis testing tailored to
imaging inverse problems. Modern imaging methods struggle to support hypothesis
testing, a core component of the scientific method that is essential for the
rigorous interpretation of experiments and robust interfacing with
decision-making processes. There are three main reasons why image-based
hypothesis testing is challenging. First, the difficulty of using a single
observation to simultaneously reconstruct an image, formulate hypotheses, and
quantify their statistical significance. Second, the hypotheses encountered in
imaging are mostly of semantic nature, rather than quantitative statements
about pixel values. Third, it is challenging to control test error
probabilities because the null and alternative distributions are often unknown.
Our proposed approach addresses these difficulties by leveraging concepts from
self-supervised computational imaging, vision-language models, and
non-parametric hypothesis testing with e-values. We demonstrate our proposed
framework through numerical experiments related to image-based phenotyping,
where we achieve excellent power while robustly controlling Type I errors.