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基于惯性传感器的数据手套对手语的识别。

Recognition of sign language with an inertial sensor-based data glove.

作者信息

Kim Kyung-Won, Lee Mi-So, Soon Bo-Ram, Ryu Mun-Ho, Kim Je-Nam

机构信息

Department of Healthcare Engineering, Chonbuk National University, Deokjin-gu, Jeonju-si, Korea.

Division of Biomedical Engineering, Chonbuk National University, Korea.

出版信息

Technol Health Care. 2015;24 Suppl 1:S223-30. doi: 10.3233/THC-151078.

Abstract

Communication between people with normal hearing and hearing impairment is difficult. Recently, a variety of studies on sign language recognition have presented benefits from the development of information technology. This study presents a sign language recognition system using a data glove composed of 3-axis accelerometers, magnetometers, and gyroscopes. Each data obtained by the data glove is transmitted to a host application (implemented in a Window program on a PC). Next, the data is converted into angle data, and the angle information is displayed on the host application and verified by outputting three-dimensional models to the display. An experiment was performed with five subjects, three females and two males, and a performance set comprising numbers from one to nine was repeated five times. The system achieves a 99.26% movement detection rate, and approximately 98% recognition rate for each finger's state. The proposed system is expected to be a more portable and useful system when this algorithm is applied to smartphone applications for use in some situations such as in emergencies.

摘要

听力正常者与听力障碍者之间的沟通存在困难。近来,关于手语识别的各类研究展现了信息技术发展所带来的益处。本研究提出了一种手语识别系统,该系统使用由三轴加速度计、磁力计和陀螺仪组成的数据手套。数据手套获取的每个数据都被传输到主机应用程序(在个人电脑上的Windows程序中实现)。接下来,数据被转换为角度数据,角度信息在主机应用程序上显示,并通过向显示器输出三维模型进行验证。对五名受试者(三名女性和两名男性)进行了实验,包含从一到九的数字的一组动作被重复执行了五次。该系统实现了99.26%的动作检测率,并且每个手指状态的识别率约为98%。当该算法应用于智能手机应用程序以用于某些情况(如紧急情况)时,预计所提出的系统将成为更便于携带且有用的系统。

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