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用于人手姿势模式识别的针织感应手套。

A Knitted Sensing Glove for Human Hand Postures Pattern Recognition.

机构信息

Department of Electrical and Electronic Engineering, Hanyang University, Ansan 15588, Korea.

Human-Tech Convergence Program, Department of Clothing and Textiles, Hanyang University, Seoul 04763, Korea.

出版信息

Sensors (Basel). 2021 Feb 15;21(4):1364. doi: 10.3390/s21041364.

Abstract

In recent years, flexible sensors for data gloves have been developed that aim to achieve excellent wearability, but they are associated with difficulties due to the complicated manufacturing and embedding into the glove. This study proposes a knitted glove integrated with strain sensors for pattern recognition of hand postures. The proposed sensing glove is fabricated at all once by a knitting technique without sewing and bonding, which is composed of strain sensors knitted with conductive yarn and a glove body with non-conductive yarn. To verify the performance of the developed glove, electrical resistance variations were measured according to the flexed angle and speed. These data showed different values depending on the speed or angle of movements. We carried out experiments on hand postures pattern recognition for the practicability verification of the knitted sensing glove. For this purpose, 10 able-bodied subjects participated in the recognition experiments on 10 target hand postures. The average classification accuracy of 10 subjects reached 94.17% when their own data were used. The accuracy of up to 97.1% was achieved in the case of grasp posture among 10 target postures. When all mixed data from 10 subjects were utilized for pattern recognition, the average classification expressed by the confusion matrix arrived at 89.5%. Therefore, the comprehensive experimental results demonstrated the effectiveness of the knitted sensing gloves. In addition, it is expected to reduce the cost through a simple manufacturing process of the knitted sensing glove.

摘要

近年来,已经开发出了用于数据手套的柔性传感器,旨在实现出色的可穿戴性,但由于制造和嵌入手套的复杂性,它们存在一些困难。本研究提出了一种集成应变传感器的针织手套,用于对手部姿势的模式识别。所提出的传感手套通过编织技术一次性制造而成,无需缝合和粘接,它由带有导电纱线的应变传感器和带有非导电纱线的手套主体组成。为了验证开发的手套的性能,根据弯曲角度和速度测量了电阻变化。这些数据显示出不同的值,具体取决于运动的速度或角度。我们对手部姿势模式识别进行了实验,以验证针织传感手套的实用性。为此,10 名健康受试者参与了针对 10 种目标手部姿势的识别实验。当使用自己的数据时,10 名受试者的平均分类准确率达到 94.17%。在 10 种目标姿势中,抓握姿势的准确率高达 97.1%。当所有 10 名受试者的混合数据用于模式识别时,混淆矩阵表示的平均分类准确率达到 89.5%。因此,综合实验结果证明了针织传感手套的有效性。此外,通过针织传感手套的简单制造工艺有望降低成本。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4890/7919032/a576fa07fb1c/sensors-21-01364-g001.jpg

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