ROAICVMar 3

Tether: Autonomous Functional Play with Correspondence-Driven Trajectory Warping

arXiv:2603.03278v11 citationsh-index: 37
Originality Incremental advance
AI Analysis

This addresses the problem of scalable robot learning without extensive human demonstrations, though it is incremental in combining existing techniques like keypoint correspondences and vision-language models.

The paper tackles the challenge of enabling robots to learn autonomously through interaction by introducing Tether, a method for autonomous functional play that uses correspondence-driven trajectory warping from few demonstrations, resulting in over 1000 expert-level trajectories and policies competitive with human-collected data.

The ability to conduct and learn from interaction and experience is a central challenge in robotics, offering a scalable alternative to labor-intensive human demonstrations. However, realizing such "play" requires (1) a policy robust to diverse, potentially out-of-distribution environment states, and (2) a procedure that continuously produces useful robot experience. To address these challenges, we introduce Tether, a method for autonomous functional play involving structured, task-directed interactions. First, we design a novel open-loop policy that warps actions from a small set of source demonstrations (<=10) by anchoring them to semantic keypoint correspondences in the target scene. We show that this design is extremely data-efficient and robust even under significant spatial and semantic variations. Second, we deploy this policy for autonomous functional play in the real world via a continuous cycle of task selection, execution, evaluation, and improvement, guided by the visual understanding capabilities of vision-language models. This procedure generates diverse, high-quality datasets with minimal human intervention. In a household-like multi-object setup, our method is the first to perform many hours of autonomous multi-task play in the real world starting from only a handful of demonstrations. This produces a stream of data that consistently improves the performance of closed-loop imitation policies over time, ultimately yielding over 1000 expert-level trajectories and training policies competitive with those learned from human-collected demonstrations.

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