Litcius/Paper detail

Principal Uncertainty Quantification With Spatial Correlation for Image Restoration Problems

Omer Belhasin, Yaniv Romano, Daniel Z. Freedman, Ehud Rivlin, Michael Elad

2023IEEE Transactions on Pattern Analysis and Machine Intelligence14 citationsDOI

Abstract

Uncertainty quantification for inverse problems in imaging has drawn much attention lately. Existing approaches towards this task define uncertainty regions based on probable values per pixel, while ignoring spatial correlations within the image, resulting in an exaggerated volume of uncertainty. In this paper, we propose PUQ (Principal Uncertainty Quantification) - a novel definition and corresponding analysis of uncertainty regions that takes into account spatial relationships within the image, thus providing reduced volume regions. Using recent advancements in generative models, we derive uncertainty intervals around principal components of the empirical posterior distribution, forming an ambiguity region that guarantees the inclusion of true unseen values with a user-defined confidence probability. To improve computational efficiency and interpretability, we also guarantee the recovery of true unseen values using only a few principal directions, resulting in more informative uncertainty regions. Our approach is verified through experiments on image colorization, super-resolution, and inpainting; its effectiveness is shown through comparison to baseline methods, demonstrating significantly tighter uncertainty regions.

Topics & Concepts

InterpretabilityUncertainty quantificationArtificial intelligenceComputer sciencePrincipal component analysisInpaintingImage (mathematics)Uncertainty analysisPrincipal (computer security)AmbiguityPattern recognition (psychology)Uncertainty reduction theoryImage resolutionPixelMathematicsMachine learningData miningStatisticsCommunicationOperating systemSociologyProgramming languageGenerative Adversarial Networks and Image SynthesisAdvanced Image Processing TechniquesImage and Signal Denoising Methods