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Automation of the Arabic sign language recognition

机译:自动化阿拉伯手语识别

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摘要

This paper introduces a system to recognize the Arabic sign language using an instrumented glove and a machine learning method. Interfaces in sign language systems can be categorized as direct-device or vision-based. The direct-device approach uses measurement devices that are in direct contact with the hand such as instrumented gloves, flexion sensors, styli and position-tracking devices. On the other hand, the vision-based approach captures the movement of the singer's hand using a camera that is sometimes aided by making the signer wear a glove that has painted areas indicating the positions of the fingers or knuckles. The proposed system basically consists of a PowerGlove that is connected through the serial port to a workstation running the support vector machine algorithm. Obtained results are promising even though a simple and cheap glove with limited sensors was utilized.
机译:本文介绍了一种使用仪器手套和机器学习方法识别阿拉伯手语的系统。手语系统中的界面可以分为直接设备界面或基于视觉的界面。直接设备方法使用与手直接接触的测量设备,例如仪器手套,弯曲传感​​器,测针和位置跟踪设备。另一方面,基于视觉的方法使用摄像头捕获歌手的手的运动,有时可以通过使签名人戴着手套上的手套进行辅助,该手套的涂漆区域指示手指或指关节的位置。所提出的系统基本上由一个PowerGlove组成,该PowerGlove通过串行端口连接到运行支持向量机算法的工作站。即使使用带有有限传感器的简单廉价的手套,获得的结果也是有希望的。

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