ROAILGSep 19, 2018

Leveraging Contact Forces for Learning to Grasp

arXiv:1809.07004v149 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of robust grasping in robotics, particularly for multi-fingered hands, but it is incremental as it builds on existing reinforcement learning methods with added contact sensing.

The paper tackles the problem of grasping objects under uncertainty by using model-free deep reinforcement learning to synthesize control policies that exploit contact sensing, resulting in significant improvement in grasping robustness for objects with complex shapes and pose uncertainty.

Grasping objects under uncertainty remains an open problem in robotics research. This uncertainty is often due to noisy or partial observations of the object pose or shape. To enable a robot to react appropriately to unforeseen effects, it is crucial that it continuously takes sensor feedback into account. While visual feedback is important for inferring a grasp pose and reaching for an object, contact feedback offers valuable information during manipulation and grasp acquisition. In this paper, we use model-free deep reinforcement learning to synthesize control policies that exploit contact sensing to generate robust grasping under uncertainty. We demonstrate our approach on a multi-fingered hand that exhibits more complex finger coordination than the commonly used two-fingered grippers. We conduct extensive experiments in order to assess the performance of the learned policies, with and without contact sensing. While it is possible to learn grasping policies without contact sensing, our results suggest that contact feedback allows for a significant improvement of grasping robustness under object pose uncertainty and for objects with a complex shape.

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