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Affordance-R1: Reinforcement Learning for Generalizable Affordance Reasoning in Multimodal Large Language Model

About

Affordance grounding focuses on predicting the specific regions of objects that are associated with the actions to be performed by robots. It plays a vital role in the fields of human-robot interaction, human-object interaction, embodied manipulation, and embodied perception. Existing models often neglect the affordance shared among different objects because they lack the Chain-of-Thought(CoT) reasoning abilities, limiting their out-of-domain (OOD) generalization and explicit reasoning capabilities. To address these challenges, we propose Affordance-R1, the first unified affordance grounding framework that integrates cognitive CoT guided Group Relative Policy Optimization (GRPO) within a reinforcement learning paradigm. Specifically, we designed a sophisticated affordance function, which contains format, perception, and cognition rewards to effectively guide optimization directions. Furthermore, we constructed a high-quality affordance-centric reasoning dataset, ReasonAff, to support training. Trained exclusively via reinforcement learning with GRPO and without explicit reasoning data, Affordance-R1 achieves robust zero-shot generalization and exhibits emergent test-time reasoning capabilities. Comprehensive experiments demonstrate that our model outperforms well-established methods and exhibits open-world generalization. To the best of our knowledge, Affordance-R1 is the first to integrate GRPO-based RL with reasoning into affordance reasoning. The code of our method and our dataset is released on https://github.com/hq-King/Affordance-R1.

Hanqing Wang, Shaoyang Wang, Yiming Zhong, Zemin Yang, Jiamin Wang, Zhiqing Cui, Jiahao Yuan, Yifan Han, Mingyu Liu, Yuexin Ma• 2025

Related benchmarks

TaskDatasetResultRank
Affordance predictionReasonAff (test)
gIoU67.41
13
Affordance SegmentationHANDAL main
gIoU27.5
11
Affordance SegmentationHANDAL reasoning
gIoU17.6
11
Affordance predictionUMD
gIoU49.85
10
Affordance Segmentation3DOI reasoning-based
gIoU50.1
9
Affordance SegmentationHANDAL easy reasoning-based
gIoU19.4
9
Affordance SegmentationHANDAL hard reasoning-based
gIoU15.9
9
Affordance SegmentationGraspNet (novel)
gIoU61.3
8
Affordance Segmentation3DOI main
gIoU51
8
Affordance SegmentationGraspNet (seen)
gIoU50.8
8
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