DS1 spectrogram: When Absolute State Fails: Evaluating Proprioceptive Encodings for Robust Manipulation

When Absolute State Fails: Evaluating Proprioceptive Encodings for Robust Manipulation

2605.13067

Authors

Ryo Watanabe,Paul Crook,Afshin Zeinaddini Meymand,Suvin Kurian,Pablo Ferreiro

Abstract

As end-to-end robotic policies are progressively deployed in the real world to solve real tasks, they face a gap between the training and inference conditions. Scaling the amount and diversity of the training data has shown some success in improving zero-shot generalization, yet robots still fail when faced with new, unseen test conditions.

For instance, while robots with fixed frames of reference are common, those with moving frames pose a greater challenge for deployment. To address this specific instance of the issue, we present a study of strategies for encoding the robot's proprioceptive state to improve both in- and out-of-distribution performance at test time.

Through a systematic study of joint representations, we find that a simple episode-wise relative frame provides the best trade-off between task performance and robustness, outperforming the baselines in extensive real-robot experiments conducted in a realistic test environment. The results suggest a practical path to leveraging data collected by robots with varying frames of reference and deployment to unseen test configurations.

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