Head Gesture Recognition Based on Capacitive Sensors Using Deep Learning Algorithms

Ionut-Cristian Severin, D. Dobrea
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Abstract

Abstract The current paper proposed and investigated the head motion recognition idea based on four capacitive sensors and deep learning models. The proposed system was designed to empower a tetraplegic person to control a remote device or an intelligent wheelchair. The capacitive sensors were placed around the neck using a necktie, which each volunteer who participated in this experiment was easy to use. The results show that the best-proposed deep learning model can determine each activity with a classification rate equal to 89.29% using capacitive raw data. During the experiments the deep learning models provided accuracy values in the range of 56.25% to 89.29%.
基于深度学习算法的电容式传感器头部手势识别
摘要本文提出并研究了基于四电容传感器和深度学习模型的头部运动识别思想。该系统旨在使四肢瘫痪者能够控制远程设备或智能轮椅。电容式传感器是用领带围在脖子上的,每个参加这个实验的志愿者都很容易使用。结果表明,提出的最佳深度学习模型可以使用电容性原始数据确定每个活动,分类率为89.29%。在实验中,深度学习模型提供的准确率值在56.25% ~ 89.29%之间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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