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Get Free AccessTactile perception includes the direct response of tactile corpuscles to environmental stimuli and psychological parameters associated with brain recognition. To date, several artificial haptic-based sensing techniques can accurately measure physical stimuli. However, quantifying the psychological parameters of tactile perception to achieve texture and roughness identification remains challenging. Here, we developed a smart finger with surpassed human tactile perception, which enabled accurate identification of material type and roughness through the integration of triboelectric sensing and machine learning. In principle, as each material has different capabilities to gain or lose electrons, a unique triboelectric fingerprint output will be generated when the triboelectric sensor is in contact with the measured object. The construction of a triboelectric sensor array could further eliminate interference from the environment, and the accuracy rate of material identification was as high as 96.8%. The proposed smart finger provides the possibility to impart artificial tactile perception to manipulators or prosthetics.
Xuecheng Qu, Zhuo Liu, Puchuan Tan, Chan Wang, Ying Liu, Hongqing Feng, Dan Luo, Zhou Li, Zhong Lin Wang (2022). Artificial tactile perception smart finger for material identification based on triboelectric sensing. , 8(31), DOI: https://doi.org/10.1126/sciadv.abq2521.
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Type
Article
Year
2022
Authors
9
Datasets
0
Total Files
0
Language
en
DOI
https://doi.org/10.1126/sciadv.abq2521
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