Extended Tactile Perception: Vibration Sensing through Tools and Grasped Objects

2021 IEEE/RSJ INTERNATIONAL CONFERENCE ON INTELLIGENT ROBOTS AND SYSTEMS (IROS)(2021)

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摘要
Humans display the remarkable ability to sense the world through tools and other held objects. For example, we are able to pinpoint impact locations on a held rod and tell apart different textures using a rigid probe. In this work, we consider how we can enable robots to have a similar capacity, i.e., to embody tools and extend perception using standard grasped objects. We propose that vibro-tactile sensing using dynamic tactile sensors on the robot fingers, along with machine learning models, enables robots to decipher contact information that is transmitted as vibrations along rigid objects. This paper reports on extensive experiments using the BioTac micro-vibration sensor and a new event dynamic sensor, the NUSkin, capable of multi-taxel sensing at 4 kHz. We demonstrate that fine localization on a held rod is possible using our approach (with errors less than 1 cm on a 20 cm rod). Next, we show that vibrotactile perception can lead to reasonable grasp stability prediction during object handover, and accurate food identification using a standard fork. We find that multi-taxel vibro-tactile sensing at a sufficiently high sampling rate (above 2 kHz) led to the best performance across the various tasks and objects. Taken together, our results provide both evidence and guidelines for using vibrotactile perception to extend tactile perception, which we believe will lead to enhanced competency with tools and better physical human-robot interaction.
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关键词
BioTac microvibration sensor,event dynamic sensor,multitaxel sensing,vibro-tactile perception,grasp stability prediction,object handover,multitaxel vibro-tactile sensing,physical human-robot interaction,extended tactile perception,vibration sensing,impact locations,rigid probe,standard grasped objects,dynamic tactile sensors,robot fingers,machine learning models,vibrations,rigid objects,NUSkin,frequency 4.0 kHz
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