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Soft-bubble: A highly compliant dense geometry tactile sensor for robot manipulation

2019-04-03
Alex Alspach, Kunimatsu Hashimoto, Naveen Kuppuswamy, Russ Tedrake

Abstract

Incorporating effective tactile sensing and mechanical compliance is key towards enabling robust and safe operation of robots in unknown, uncertain and cluttered environments. Towards realizing this goal, we present a lightweight, easy-to-build, highly compliant dense geometry sensor and end effector that comprises an inflated latex membrane with a depth sensor behind it. We present the motivations and the hardware design for this Soft-bubble and demonstrate its capabilities through example tasks including tactile-object classification, pose estimation and tracking, and nonprehensile object manipulation. We also present initial experiments to show the importance of high-resolution geometry sensing for tactile tasks and discuss applications in robust manipulation.

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URL

http://arxiv.org/abs/1904.02252

PDF

http://arxiv.org/pdf/1904.02252


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