ROCVMay 21

GesVLA: Gesture-Aware Vision-Language-Action Model Embedded Representations

arXiv:2605.2281282.0
Predicted impact top 15% in RO · last 90 daysOriginality Incremental advance
AI Analysis

For robot manipulation tasks, GesVLA addresses the limitation of text-only instructions in complex scenes with multiple similar objects.

GesVLA introduces gesture as a parallel instruction modality to resolve spatial ambiguity in VLA models, achieving improved target grounding accuracy and human-robot interaction efficiency in cluttered environments.

Vision-Language-Action (VLA) models have shown strong potential for general-purpose robot manipulation by unifying perception and action. However, existing VLA systems primarily rely on textual instructions and struggle to resolve spatial ambiguity in complex scenes with multiple similar objects. To address this limitation, we introduce gesture as a parallel instruction modality and propose a Gesture-aware Vision-Language-Action model (GesVLA). Our approach encodes gesture features directly into the latent space, enabling them to participate in both high-level reasoning and low-level action generation, and adopts a dual-VLM architecture to achieve tight coupling between gesture representations and action policies. At the data level, we construct a scalable gesture data generation pipeline by rendering hand models onto real-world scene images. This reduces the sim-to-real visual gap while producing rich data with diverse motion patterns and corresponding pointing annotations. In addition, we employ a two-stage training strategy to equip the model with both gesture perception and action prediction capabilities. We evaluate our approach on multiple real-world robotic tasks, including a controlled block manipulation task for validation and more practical scenarios such as product and produce selection. Experimental results show that incorporating gesture consistently improves target grounding accuracy and human-robot interaction efficiency, especially in complex and cluttered environments. Project page: https://gwxuan.github.io/GesVLA/.

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