4.8 Article

A flexible triboelectric tactile sensor for simultaneous material and texture recognition

期刊

NANO ENERGY
卷 93, 期 -, 页码 -

出版社

ELSEVIER
DOI: 10.1016/j.nanoen.2021.106798

关键词

Tactile sensing; Material; texture recognition; Signal decoupling; Triboelectric sensor

资金

  1. National Natural Science Foundation of China [62104125, 52007019]
  2. TsinghuaFoshan Innovation Special Fund (TFISF) [2020THFS0109]
  3. Oversea Collaboration Funds of Tsinghua [SIGS HW2021]
  4. Institute for Guo Qiang of Tsinghua University [2020GQG1004]
  5. Scientific Research Start-up Funds of Tsinghua SIGS [QD2021013C]

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MTSensing system is a wireless system integrating tactile sensing technology, which can simultaneously recognize materials and textures through a single flexible triboelectric sensor, achieving high accuracy prediction through deep learning models.
Electronic skin with tactile perception enables intelligent robots and prostheses to perform dexterous manipulation and natural interaction with the human and surroundings. However, using single tactile sensing mechanism to simultaneously percept geometry features and materials properties remains a challenge due to the bottleneck of signal decoupling. Herein, we report the MTSensing system - a wireless and fully-integrated tactile sensing system that can simultaneously recognize materials and textures based on a single flexible triboelectric sensor. The proposed triboelectric sensor converts touch into electrical signals and meanwhile, the signal processing pipeline decouples the signals into macro/micro features and feeds them into the corresponding deep learning models, which simultaneously predict the materials and textures of the contacted objects with the accuracies of 99.07% and 99.32%, respectively. The systematic integration of MTSensing hopes to pave the way for deploying low-cost and scalable electronic skin with multi-functional perceptions.

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