Mobi-$\pi$: Mobilizing Your Robot Learning Policy
Jingyun Yang, Isabella Huang, Brandon Vu, Max Bajracharya, Rika Antonova, Jeannette Bohg

TL;DR
This paper introduces Mobi-$\pi$, a framework for mobilizing robot manipulation policies by optimizing robot base poses to improve generalization without retraining, using novel view synthesis and optimization techniques.
Contribution
It proposes a novel approach to policy mobilization that decouples navigation from manipulation, enabling better generalization of policies to new robot positions without additional demonstrations.
Findings
Outperforms baselines in simulation and real-world tasks
Effectively aligns robot poses with in-distribution viewpoints
Provides metrics and tools for analyzing mobilization difficulty
Abstract
Learned visuomotor policies are capable of performing increasingly complex manipulation tasks. However, most of these policies are trained on data collected from limited robot positions and camera viewpoints. This leads to poor generalization to novel robot positions, which limits the use of these policies on mobile platforms, especially for precise tasks like pressing buttons or turning faucets. In this work, we formulate the policy mobilization problem: find a mobile robot base pose in a novel environment that is in distribution with respect to a manipulation policy trained on a limited set of camera viewpoints. Compared to retraining the policy itself to be more robust to unseen robot base pose initializations, policy mobilization decouples navigation from manipulation and thus does not require additional demonstrations. Crucially, this problem formulation complements existing…
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Taxonomy
MethodsBalanced Selection · ALIGN · Sparse Evolutionary Training
