cs.AI updates on arXiv.org 08月14日
SegDAC: Segmentation-Driven Actor-Critic for Visual Reinforcement Learning
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本文提出SegDAC,一种基于分割驱动的演员-评论家方法,利用Segment Anything和YOLO-World提升视觉强化学习性能,在视觉泛化及样本效率方面取得显著成效。

arXiv:2508.09325v1 Announce Type: cross Abstract: Visual reinforcement learning (RL) is challenging due to the need to learn both perception and actions from high-dimensional inputs and noisy rewards. Although large perception models exist, integrating them effectively into RL for visual generalization and improved sample efficiency remains unclear. We propose SegDAC, a Segmentation-Driven Actor-Critic method. SegDAC uses Segment Anything (SAM) for object-centric decomposition and YOLO-World to ground segments semantically via text prompts. It includes a novel transformer-based architecture that supports a dynamic number of segments at each time step and effectively learns which segments to focus on using online RL, without using human labels. By evaluating SegDAC over a challenging visual generalization benchmark using Maniskill3, which covers diverse manipulation tasks under strong visual perturbations, we demonstrate that SegDAC achieves significantly better visual generalization, doubling prior performance on the hardest setting and matching or surpassing prior methods in sample efficiency across all evaluated tasks.

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视觉强化学习 SegDAC 样本效率 视觉泛化 Segment Anything
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