Conformal Semantic Image Segmentation: Post-hoc Quantification of Predictive Uncertainty
Luca Mossina, Joseba Dalmau, Léo Andéol
Abstract
We propose a post-hoc, computationally lightweight method to quantify predictive uncertainty in semantic image segmentation. Our approach uses conformal prediction to generate statistically valid prediction sets that are guaranteed to include the ground-truth segmentation mask at a predefined confidence level. We introduce a novel visualization technique of conformalized predictions based on heatmaps, and provide metrics to assess their empirical validity. We demonstrate the effectiveness of our approach on well-known benchmark datasets and image segmentation prediction models, and conclude with practical insights.
Topics & Concepts
Benchmark (surveying)Computer scienceSegmentationArtificial intelligenceVisualizationImage segmentationGround truthImage (mathematics)Post hocScale-space segmentationPattern recognition (psychology)Data miningMachine learningMedicineGeographyDentistryGeodesyExplainable Artificial Intelligence (XAI)Radiomics and Machine Learning in Medical ImagingMachine Learning in Healthcare