ROCVAug 7, 2023

MOMA-Force: Visual-Force Imitation for Real-World Mobile Manipulation

ByteDance
arXiv:2308.03624v130 citationsh-index: 30
Originality Incremental advance
AI Analysis

This addresses the challenge of efficient and robust mobile manipulation for real-world applications, representing an incremental improvement by combining existing techniques.

The paper tackles the problem of enabling mobile manipulators to perform multiple contact-rich manipulation tasks with high accuracy and robustness, achieving higher success rates and smaller contact forces compared to baseline methods in real-world household settings.

In this paper, we present a novel method for mobile manipulators to perform multiple contact-rich manipulation tasks. While learning-based methods have the potential to generate actions in an end-to-end manner, they often suffer from insufficient action accuracy and robustness against noise. On the other hand, classical control-based methods can enhance system robustness, but at the cost of extensive parameter tuning. To address these challenges, we present MOMA-Force, a visual-force imitation method that seamlessly combines representation learning for perception, imitation learning for complex motion generation, and admittance whole-body control for system robustness and controllability. MOMA-Force enables a mobile manipulator to learn multiple complex contact-rich tasks with high success rates and small contact forces. In a real household setting, our method outperforms baseline methods in terms of task success rates. Moreover, our method achieves smaller contact forces and smaller force variances compared to baseline methods without force imitation. Overall, we offer a promising approach for efficient and robust mobile manipulation in the real world. Videos and more details can be found on \url{https://visual-force-imitation.github.io}

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