ROApr 5

Adaptive Action Chunking at Inference-time for Vision-Language-Action Models

arXiv:2604.0416192.34 citations
AI Analysis

This addresses a key bottleneck for robotic manipulation by enabling adaptive chunking, though it is incremental as it builds on existing VLA models.

The paper tackles the problem of selecting optimal action chunk sizes in Vision-Language-Action models to balance reactivity and consistency in robotic manipulation, resulting in substantial performance improvements over state-of-the-art alternatives in simulated and real-world tasks.

In Vision-Language-Action (VLA) models, action chunking (i.e., executing a sequence of actions without intermediate replanning) is a key technique to improve robotic manipulation abilities. However, a large chunk size reduces the model's responsiveness to new information, while a small one increases the likelihood of mode-jumping, jerky behavior resulting from discontinuities between chunks. Therefore, selecting the optimal chunk size is an urgent demand to balance the model's reactivity and consistency. Unfortunately, a dominant trend in current VLA models is an empirical fixed chunk length at inference-time, hindering their superiority and scalability across diverse manipulation tasks. To address this issue, we propose a novel Adaptive Action Chunking (AAC) strategy, which exploits action entropy as the cue to adaptively determine the chunk size based on current predictions. Extensive experiments on a wide range of simulated and real-world robotic manipulation tasks have demonstrated that our approach substantially improves performance over the state-of-the-art alternatives. The videos and source code are publicly available at https://lance-lot.github.io/adaptive-chunking.github.io/.

Foundations

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