Facial expressions recognition for arabic sign language translation

A. S. Elons, Menna Ahmed, Hwaidaa Shedid
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引用次数: 7

Abstract

Contrary to the common sense that tells us sign language depends mainly on hands, other factors such as facial expressions, body movements and lips affect dramatically a sign meaning. Arabic Sign Language (ArSL) tends to be a descriptive gesture language, facial expressions are involved in 70% of total signs. In this paper, a study on an ArSL database is performed to conclude that the 6 main facial expressions are essential to recognize the sign. A developed system used to classify these expressions accomplished 92% recognition rate on 5 different people. The system employed already existing technical methods such as: Recursive Principle Components (RPCA) for feature extraction and Multi-layer Perceptron (MLP) for classification. The main contribution of this paper is employing the developed module and integrating it with an already existing hand sign recognition system. The proposed system enhanced the hand sign recognition system and raised the recognition rate from 88% to 98%. Various people's shapes and capturing angles and distances have also been taken into consideration.
面部表情识别在阿拉伯手语翻译中的应用
与告诉我们手语主要取决于手的常识相反,面部表情、身体动作和嘴唇等其他因素对手势的含义有很大影响。阿拉伯手语(ArSL)是一种描述性的手势语言,面部表情占所有手势的70%。本文通过对ArSL数据库的研究,得出6种主要的面部表情是识别手势所必需的。一个用于分类这些表情的开发系统在5个不同的人身上实现了92%的识别率。该系统采用了已有的技术方法,如:递归主成分(RPCA)进行特征提取,多层感知器(MLP)进行分类。本文的主要贡献在于将所开发的模块与已有的手势识别系统相结合。该系统对手势识别系统进行了改进,将识别率从88%提高到98%。各种人物的形状和捕捉角度和距离也被考虑在内。
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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