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Main Authors: Wang, Shiqin, Chen, Haoyang, Huang, Huaizhou, He, Yinkan, Sun, Dongfang, Chen, Xiaoqing, Liu, Xingyu, Wang, Zheng, Zhao, Kaiyan
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.24322
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author Wang, Shiqin
Chen, Haoyang
Huang, Huaizhou
He, Yinkan
Sun, Dongfang
Chen, Xiaoqing
Liu, Xingyu
Wang, Zheng
Zhao, Kaiyan
author_facet Wang, Shiqin
Chen, Haoyang
Huang, Huaizhou
He, Yinkan
Sun, Dongfang
Chen, Xiaoqing
Liu, Xingyu
Wang, Zheng
Zhao, Kaiyan
contents The learning order of semantic classes significantly impacts unsupervised domain adaptation for semantic segmentation, especially under adverse weather conditions. Most existing curricula rely on handcrafted heuristics (e.g., fixed uncertainty metrics) and follow a static schedule, which fails to adapt to a model's evolving, high-dimensional training dynamics, leading to category bias. Inspired by Reinforcement Learning, we cast curriculum learning as a sequential decision problem and propose an autonomous class scheduler. This scheduler consists of two components: (i) a high-dimensional state encoder that maps the model's training status into a latent space and distills key features indicative of progress, and (ii) a category-fair policy-gradient objective that ensures balanced improvement across classes. Coupled with mixed source-target supervision, the learned class rankings direct the network's focus to the most informative classes at each stage, enabling more adaptive and dynamic learning. It is worth noting that our method achieves state-of-the-art performance on three widely used benchmarks (e.g., ACDC, Dark Zurich, and Nighttime Driving) and shows generalization ability in synthetic-to-real semantic segmentation.
format Preprint
id arxiv_https___arxiv_org_abs_2603_24322
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Heuristic Self-Paced Learning for Domain Adaptive Semantic Segmentation under Adverse Conditions
Wang, Shiqin
Chen, Haoyang
Huang, Huaizhou
He, Yinkan
Sun, Dongfang
Chen, Xiaoqing
Liu, Xingyu
Wang, Zheng
Zhao, Kaiyan
Computer Vision and Pattern Recognition
The learning order of semantic classes significantly impacts unsupervised domain adaptation for semantic segmentation, especially under adverse weather conditions. Most existing curricula rely on handcrafted heuristics (e.g., fixed uncertainty metrics) and follow a static schedule, which fails to adapt to a model's evolving, high-dimensional training dynamics, leading to category bias. Inspired by Reinforcement Learning, we cast curriculum learning as a sequential decision problem and propose an autonomous class scheduler. This scheduler consists of two components: (i) a high-dimensional state encoder that maps the model's training status into a latent space and distills key features indicative of progress, and (ii) a category-fair policy-gradient objective that ensures balanced improvement across classes. Coupled with mixed source-target supervision, the learned class rankings direct the network's focus to the most informative classes at each stage, enabling more adaptive and dynamic learning. It is worth noting that our method achieves state-of-the-art performance on three widely used benchmarks (e.g., ACDC, Dark Zurich, and Nighttime Driving) and shows generalization ability in synthetic-to-real semantic segmentation.
title Heuristic Self-Paced Learning for Domain Adaptive Semantic Segmentation under Adverse Conditions
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2603.24322