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That Label's Got Style: Handling Label Style Bias for Uncertain Image Segmentation

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arxiv 2303.15850 v1 pith:6SQKCF5A submitted 2023-03-28 cs.CV cs.LG

That Label's Got Style: Handling Label Style Bias for Uncertain Image Segmentation

classification cs.CV cs.LG
keywords labelsegmentationuncertaintystylebiasdatasetsdifferentmodels
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Segmentation uncertainty models predict a distribution over plausible segmentations for a given input, which they learn from the annotator variation in the training set. However, in practice these annotations can differ systematically in the way they are generated, for example through the use of different labeling tools. This results in datasets that contain both data variability and differing label styles. In this paper, we demonstrate that applying state-of-the-art segmentation uncertainty models on such datasets can lead to model bias caused by the different label styles. We present an updated modelling objective conditioning on labeling style for aleatoric uncertainty estimation, and modify two state-of-the-art-architectures for segmentation uncertainty accordingly. We show with extensive experiments that this method reduces label style bias, while improving segmentation performance, increasing the applicability of segmentation uncertainty models in the wild. We curate two datasets, with annotations in different label styles, which we will make publicly available along with our code upon publication.

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  1. Towards Fairness under Label Bias in Image Segmentation: Impact, Measurement and Mitigation

    cs.CV 2026-05 unverdicted novelty 6.0

    An adaptation of Confident Learning detects directional label errors in segmentation datasets without clean ground truth and leverages encoder feature separability to mitigate bias and equalize performance across subgroups.