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Autori principali: Kundu, Soumya Snigdha, Kofler, Florian, Ivory, Marina, Moller, Hendrik, Shapey, Jonathan, Vercauteren, Tom
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2604.24276
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author Kundu, Soumya Snigdha
Kofler, Florian
Ivory, Marina
Moller, Hendrik
Shapey, Jonathan
Vercauteren, Tom
author_facet Kundu, Soumya Snigdha
Kofler, Florian
Ivory, Marina
Moller, Hendrik
Shapey, Jonathan
Vercauteren, Tom
contents Instance-sensitive losses for semantic segmentation such as blob loss and CC loss were designed to address instance imbalance, ensuring small lesions generate the same gradient as large ones, but operate only on single-class segmentation. In multi-class settings, class imbalance poses an additional problem: rare classes with few instances receive a disproportionately small share of the training signal. We show that extending instance-sensitive losses to multi-class segmentation via a one-vs-rest class decomposition repurposes them to also address class imbalance, as uniform averaging over classes ensures each class contributes equally regardless of frequency. We further show that inverse-size weighting, which destabilizes training when applied globally due to weight imbalances across rare and common classes, becomes effective when integrated within the per-component loss, confining the reweighting to each component's spatial context. On the BraTS-METS 2025 dataset (260 test cases), multi-class CC loss improves foreground Dice (0.64 +/- 0.26 vs. 0.59 +/- 0.27 baseline) and rare-class Dice, while maintaining Panoptic Quality at DSC threshold 0.5. Multi-class blob loss achieves the best Panoptic Quality at threshold 0.5 (0.40 +/- 0.24 vs. 0.38 +/- 0.25 baseline) and recognition quality (0.53 +/- 0.29 vs. 0.49 +/- 0.30). Integrating inverse-size weighting within the per-component loss increases rare-class Dice to 0.44 +/- 0.36 at the cost of reduced detection quality.
format Preprint
id arxiv_https___arxiv_org_abs_2604_24276
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Instance Awareness of Multi-class Semantic Segmentation Loss Functions
Kundu, Soumya Snigdha
Kofler, Florian
Ivory, Marina
Moller, Hendrik
Shapey, Jonathan
Vercauteren, Tom
Computer Vision and Pattern Recognition
Instance-sensitive losses for semantic segmentation such as blob loss and CC loss were designed to address instance imbalance, ensuring small lesions generate the same gradient as large ones, but operate only on single-class segmentation. In multi-class settings, class imbalance poses an additional problem: rare classes with few instances receive a disproportionately small share of the training signal. We show that extending instance-sensitive losses to multi-class segmentation via a one-vs-rest class decomposition repurposes them to also address class imbalance, as uniform averaging over classes ensures each class contributes equally regardless of frequency. We further show that inverse-size weighting, which destabilizes training when applied globally due to weight imbalances across rare and common classes, becomes effective when integrated within the per-component loss, confining the reweighting to each component's spatial context. On the BraTS-METS 2025 dataset (260 test cases), multi-class CC loss improves foreground Dice (0.64 +/- 0.26 vs. 0.59 +/- 0.27 baseline) and rare-class Dice, while maintaining Panoptic Quality at DSC threshold 0.5. Multi-class blob loss achieves the best Panoptic Quality at threshold 0.5 (0.40 +/- 0.24 vs. 0.38 +/- 0.25 baseline) and recognition quality (0.53 +/- 0.29 vs. 0.49 +/- 0.30). Integrating inverse-size weighting within the per-component loss increases rare-class Dice to 0.44 +/- 0.36 at the cost of reduced detection quality.
title Instance Awareness of Multi-class Semantic Segmentation Loss Functions
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2604.24276