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Deep Image Segmentation via Discriminant Feature Learning

About

Accurate image segmentation remains challenging, particularly in generating sharp, confident boundaries. While modern architectures have advanced the field, many of them still rely on standard loss functions like Cross-Entropy and Dice, which often neglect the discriminative structure of learned features, leading to inaccurate boundaries. This work introduces Deep Discriminant Analysis (DDA), a differentiable, architecture-agnostic loss function that embeds classical discriminant principles for network training. DDA explicitly maximizes between-class variance while minimizing within-class one, promoting compact and separable feature distributions without increasing inference cost. Evaluations on the DIS5K benchmark demonstrate that DDA consistently improves segmentation accuracy, boundary sharpness, and model confidence across various architectures. Our results show that integrating discriminant analysis offers a simple, effective path for building more robust segmentation models.

Adam Dawid Sztamborski, Ra\"ul P\'erez-Gonzalo, Antonio Agudo• 2026

Related benchmarks

TaskDatasetResultRank
Dichotomous Image SegmentationDIS5K TE (1-4) (test)--
42
Dichotomous Image SegmentationDIS5K DIS-TE1 (test)--
24
Dichotomous Image SegmentationDIS5K DIS-TE2 (test)--
24
Dichotomous Image SegmentationDIS5K DIS-TE3 (test)--
24
Dichotomous Image SegmentationDIS5K DIS-TE4 (test)--
24
Dichotomous Image SegmentationDIS5K TE1 (test)--
20
Dichotomous Image SegmentationDIS5K TE2 (test)--
20
Dichotomous Image SegmentationDIS5K TE4 (test)--
20
Dichotomous Image SegmentationDIS5K (val)--
18
Dichotomous Image SegmentationDIS5K DIS-TE(1-4) (test)
Mean IoU69.7
7
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