Back to Search Start Over

Noncontact Electromagnetic Wireless Recognition for Prosthesis Based on Intelligent Metasurface

Authors :
Hai Peng Wang
Yu Xuan Zhou
He Li
Guo Dong Liu
Si Meng Yin
Peng Ju Li
Shu Yue Dong
Chao Yue Gong
Shi Yu Wang
Yun Bo Li
Tie Jun Cui
Source :
Advanced science (Weinheim, Baden-Wurttemberg, Germany). 9(20)
Publication Year :
2022

Abstract

With the development of artificial intelligence and Internet of Things, hand gesture recognition techniques have attracted great attention owing to their excellent applications in developing human-machine interaction (HMI). Here, the authors propose a non-contact hand gesture recognition method based on intelligent metasurface. Owing to the advantage of dynamically controlling the electromagnetic (EM) focusing in the wavefront engineering, a transmissive programmable metasurface is presented to illuminate the forearm with more focusing spots and obtain comprehensive echo data, which can be processed under the machine learning technology to reach the non-contact gesture recognition with high accuracy. Compared with the traditional passive antennas, unique variations of echo coefficients resulted from near fields perturbed by finger and wrist agonist muscles can be aquired through the programmable metasurface by switching the positions of EM focusing. The authors realize the gesture recognition using support vector machine algorithm based on five individual focusing spots data and all-five-spot data. The influences of the focusing spots on the gesture recognition are analyzed through linear discriminant analysis algorithm and Fisher score. Experimental verifications prove that the proposed metasurface-based non-contact wireless design can realize the classification of hand gesture recognition with higher accuracy than traditional passive antennas, and give an HMI solution.

Details

ISSN :
21983844
Volume :
9
Issue :
20
Database :
OpenAIRE
Journal :
Advanced science (Weinheim, Baden-Wurttemberg, Germany)
Accession number :
edsair.doi.dedup.....3b6798748f7891368b75fe6ad5af50f1