ROAIJun 7

GEAR-VLA: Learning Geometry-Aware Action Representations for Generalizable Robotic Manipulation

Yuan Zhang, Shiqi Zhang, Yedong Shen, Shuai Dong, Jiajun Deng, Xin Zhang, Yuxuan Gao, Jiajia Wu, Xin Nie, Zhiyuan Cheng, Jianmin Ji, Yanyong Zhang
arXiv:2606.08530v123.4Has Code
Predicted impact top 10% in RO · last 90 daysOriginality Incremental advance
AI Analysis

For robotic manipulation, this work addresses generalization to unseen objects, backgrounds, and embodiments, which is a key bottleneck for real-world deployment of VLA models.

GEAR-VLA introduces a geometry-aware action representation for robotic manipulation, achieving state-of-the-art performance on LIBERO, zero-shot LIBERO-Plus, and RoboTwin 2.0, with 85.9% success on AgileX and 81.0% on unseen LDT-01 embodiment, and 90.1% on a universal grasping benchmark with 212 unseen objects.

Vision-Language-Action (VLA) models achieve strong benchmark performance but still struggle in real-world deployment with unseen objects, background shifts, and different robot embodiments. We argue that this stems from the lack of a unified geometry-aware manipulation representation, leaving existing VLAs vulnerable to low-level trajectory supervision, misaligned 3D features, and embodiment differences. To address this, we propose GEAR-VLA, a VLA framework for learning unified geometry-aware action representations for generalizable robotic manipulation. GEAR-VLA adopts coarse-to-fine action learning, where multi-source embodied pretraining equips the VLM with embodied reasoning and discrete action understanding before latent action tokens connect action semantics to a gradient-decoupled DiT continuous action expert. It further performs semantic-aligned 3D integration by aligning a trainable 3D spatial backbone with the VLA representation while freezing the original VLM-aligned visual pathway. To share this representation across robots, GEAR-VLA uses embodiment canonicalization, where embodiment-aware states and embodiment-invariant actions confine robot differences to the low-level interface. Extensive simulation and real-world experiments demonstrate strong generalization: GEAR-VLA achieves state-of-the-art performance on LIBERO, zero-shot LIBERO-Plus, and RoboTwin 2.0, reaches 85.9% success on AgileX and 81.0% on the pretraining-unseen LDT-01 embodiment, and obtains 90.1% success on a 6,360-trial universal grasping benchmark with 212 unseen objects. Code and models will be released at https://github.com/babynabeauty/GEAR-VLA.

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