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Out-of-Distribution Segmentation via Wasserstein-Based Evidential Uncertainty

Published: December 12, 2025 | arXiv ID: 2512.11373v1

By: Arnold Brosch , Abdelrahman Eldesokey , Michael Felsberg and more

Deep neural networks achieve superior performance in semantic segmentation, but are limited to a predefined set of classes, which leads to failures when they encounter unknown objects in open-world scenarios. Recognizing and segmenting these out-of-distribution (OOD) objects is crucial for safety-critical applications such as automated driving. In this work, we present an evidence segmentation framework using a Wasserstein loss, which captures distributional distances while respecting the probability simplex geometry. Combined with Kullback-Leibler regularization and Dice structural consistency terms, our approach leads to improved OOD segmentation performance compared to uncertainty-based approaches.

Category
Computer Science:
CV and Pattern Recognition