cs.AI updates on arXiv.org 09月08日
增强自动驾驶图像分割鲁棒性研究
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本文探讨了增强自动驾驶图像分割鲁棒性的两种方法:将不确定性度量直接纳入SAM2损失函数的微调过程,以及将UAT应用于自动驾驶场景。实验表明,这两种方法均有效提升了自动驾驶在极端天气条件下的图像分割性能。

arXiv:2509.04735v1 Announce Type: cross Abstract: Recent advances in vision foundation models, such as the Segment Anything Model (SAM) and its successor SAM2, have achieved state-of-the-art performance on general image segmentation benchmarks. However, these models struggle in adverse weather conditions where visual ambiguity is high, largely due to their lack of uncertainty quantification. Inspired by progress in medical imaging, where uncertainty-aware training has improved reliability in ambiguous cases, we investigate two approaches to enhance segmentation robustness for autonomous driving. First, we introduce a multi-step finetuning procedure for SAM2 that incorporates uncertainty metrics directly into the loss function, improving overall scene recognition. Second, we adapt the Uncertainty-Aware Adapter (UAT), originally designed for medical image segmentation, to driving contexts. We evaluate both methods on CamVid, BDD100K, and GTA driving datasets. Experiments show that UAT-SAM outperforms standard SAM in extreme weather, while SAM2 with uncertainty-aware loss achieves improved performance across diverse driving scenes. These findings underscore the value of explicit uncertainty modeling for safety-critical autonomous driving in challenging environments.

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自动驾驶 图像分割 鲁棒性 不确定性度量 UAT
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