A Quantitative Comparison of Epistemic Uncertainty Maps Applied to Multi-Class Segmentation
Robin Camarasa (1, 2), Daniel Bos (2, 3), Jeroen Hendrikse (4),, Paul Nederkoorn (5), M. Eline Kooi (6), Aad van der Lugt (2), Marleen de, Bruijne (1, 2, 7), ((1) Biomedical Imaging Group Rotterdam, Department of, Radiology, Nuclear Medicine, Erasmus MC, Rotterdam

TL;DR
This paper systematically compares various epistemic uncertainty map methods for multi-class segmentation in medical imaging, demonstrating that certain combined and class-specific methods outperform others in accuracy and calibration.
Contribution
It introduces a quantitative framework for comparing epistemic uncertainty maps and identifies the most effective methods for multi-class segmentation tasks.
Findings
Multi-class entropy and mutual information outperform other combined uncertainty maps.
One-vs-all entropy outperforms class-wise entropy and variance in class-specific scenarios.
Class-wise entropy provides better calibration among class-specific uncertainty maps.
Abstract
Uncertainty assessment has gained rapid interest in medical image analysis. A popular technique to compute epistemic uncertainty is the Monte-Carlo (MC) dropout technique. From a network with MC dropout and a single input, multiple outputs can be sampled. Various methods can be used to obtain epistemic uncertainty maps from those multiple outputs. In the case of multi-class segmentation, the number of methods is even larger as epistemic uncertainty can be computed voxelwise per class or voxelwise per image. This paper highlights a systematic approach to define and quantitatively compare those methods in two different contexts: class-specific epistemic uncertainty maps (one value per image, voxel and class) and combined epistemic uncertainty maps (one value per image and voxel). We applied this quantitative analysis to a multi-class segmentation of the carotid artery lumen and vessel…
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Taxonomy
TopicsCell Image Analysis Techniques · Machine Learning in Materials Science · Medical Image Segmentation Techniques
MethodsDropout
