Dynamic Hand Gesture Recognition System for Kurdish Sign Language Using Two Lines of Features

M. R. Mahmood, Adnan Mohsin Abdulazeez, Zeynep Orman
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引用次数: 15

Abstract

Hand gesture recognition forms a great difficulty for computer vision especially in dynamics. Sign language has been significant and an interesting application field of dynamic hand gesture recognition system. The recognition of human hands formed an- extremely complicated mission. The solution for such a difficulty requires a robust hand tracking method which depends on an effective feature and classifier. This paper presents a novel, fast and simple method for dynamic hand gesture recognition based on two lines (hundred) of features extracted from two rows of a Real-Time video. Feature selections have been used for hand shape representation to recognize the dynamic word for Kurdish Sign Language. The features extracted in real time from pre-processed hand object were represented through the optimization values of binary captured frame. Finally, an Artificial Neural Network classifier is used to recognize the performed hand gestures by 80% for training and 20% for testing with success 98%.
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基于两行特征的库尔德语动态手势识别系统
手势识别是计算机视觉的一大难点,尤其是在动态领域。手语一直是动态手势识别系统中一个重要而有趣的应用领域。对人手的识别是一项极其复杂的任务。解决这一难题需要一种鲁棒的手部跟踪方法,该方法依赖于有效的特征和分类器。本文提出了一种新颖、快速、简单的动态手势识别方法,该方法基于从实时视频的两行图像中提取的两行特征。特征选择被用于手部形状表示,以识别库尔德手语的动态单词。通过二进制捕获帧的优化值来表示从预处理的手部对象中实时提取的特征。最后,使用人工神经网络分类器对手势进行识别,训练识别率为80%,测试识别率为20%,成功率为98%。
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