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Do We Need Perfect Data? Leveraging Noise for Domain Generalized Segmentation

Taeyeong Kim,Seungjoon Lee,Junguk Kim,MyeongAh Cho
The 40th Annual AAAI Conference on Artificial Intelligence (AAAI 2026)2026

Framework Overview

Do We Need Perfect Data? Leveraging Noise for Domain Generalized Segmentation - Framework Overview

Abstract

Domain generalization in semantic segmentation faces challenges from domain shifts, particularly under adverse conditions. While diffusion-based data generation methods show promise, they introduce inherent misalignment between generated images and semantic masks. This paper presents FLEX-Seg (FLexible Edge eXploitation for Segmentation), a framework that transforms this limitation into an opportunity for robust learning. FLEX-Seg comprises three key components: (1) Granular Adaptive Prototypes that captures boundary characteristics across multiple scales, (2) Uncertainty Boundary Emphasis that dynamically adjusts learning emphasis based on prediction entropy, and (3) Hardness-Aware Sampling that progressively focuses on challenging examples. By leveraging inherent misalignment rather than enforcing strict alignment, FLEX-Seg learns robust representations while capturing rich stylistic variations. Experiments across five real-world datasets demonstrate consistent improvements over state-of-the-art methods, achieving 2.44% and 2.63% mIoU gains on ACDC and Dark Zurich. Our findings validate that adaptive strategies for handling imperfect synthetic data lead to superior domain generalization.

Keywords

Semantic Domain GeneralizationSemantic SegmentationRobust Segmentation

Citation

@article{kim2025we,
  title={Do We Need Perfect Data? Leveraging Noise for Domain Generalized Segmentation},
  author={Kim, Taeyeong and Lee, SeungJoon and Kim, Jung Uk and Cho, MyeongAh},
  journal={arXiv preprint arXiv:2511.22948},
  year={2025}
}