FutureVLA: Joint Visuomotor Prediction for Vision-Language-Action Model
Xiaoxu Xu, Hao Li, Jinhui Ye, Yilun Chen, Jia Zeng, Xinyi Chen, Linning Xu, Dahua Lin, Weixin Li, Jiangmiao Pang

TL;DR
FutureVLA introduces a novel joint visuomotor predictive architecture that decouples visual and motor information, enabling better temporal continuity and generalization for vision-language-action tasks in embodied agents.
Contribution
The paper proposes a new architecture with a gating mechanism and embedding alignment strategy to improve joint visuomotor modeling, addressing limitations of existing methods.
Findings
Enhances the generalization of vision-language-action models.
Improves the accuracy of future environmental state predictions.
Consistently outperforms baseline models in experiments.
Abstract
Predictive foresight is important to intelligent embodied agents. Since the motor execution of a robot is intrinsically constrained by its visual perception of environmental geometry, effectively anticipating the future requires capturing this tightly coupled visuomotor interplay. While recent vision-language-action models attempt to incorporate future guidance, they struggle with this joint modeling. Existing explicit methods divert capacity to task-irrelevant visual details, whereas implicit methods relying on sparse frame pairs disrupt temporal continuity. By heavily relying on visual reconstruction, these methods become visually dominated, entangling static scene context with dynamic action intent. We argue that effective joint visuomotor predictive modeling requires both temporal continuity and visually-conditioned supervision decoupling. To this end, we propose FutureVLA,…
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Taxonomy
TopicsHuman Pose and Action Recognition · Robot Manipulation and Learning · Multimodal Machine Learning Applications
