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Edge-based recognizer for Arabic sign language alphabet (ArS2V-Arabic sign to voice)

机译:阿拉伯语标志语言字母(ARS2V-阿拉伯语标志到语音)的边缘识别器

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This paper introduces a new hand gesture recognition technique to recognize Arabic sign language alphabet and converts it into voice correspondences to enable Arabian deaf people to interact with normal people. The proposed technique captures a color image for the hand gesture and converts it into YCbCr color space that provides an efficient and accurate way to extract skin regions from colored images under various illumination changes. Prewitt edge detector is used to extract the edges of the segmented hand gesture. Principal Component Analysis algorithm is applied to the extracted edges to form the predefined feature vectors for signs and gestures library. The Euclidean distance is used to measure the similarity between the signs feature vectors. The nearest sign is selected and the corresponding sound clip is played. The proposed technique is used to recognize Arabic sign language alphabets and the most common Arabic gestures. Specifically, we applied the technique to more than 150 signs and gestures with accuracy near to 97% at real time test for three different signers. The detailed of the proposed technique and the experimental results are discussed in this paper.
机译:本文介绍了一种新的手势识别技术,可以识别阿拉伯语标志语言字母表,并将其转换为语音对应关系,以使阿拉伯聋人能够与正常人互动。所提出的技术捕获了手势的彩色图像,并将其转换为YCBCR颜色空间,其提供了在各种照明变化下从彩色图像中提取皮肤区域的有效和准确的方法。 PREWITT边缘检测器用于提取分段手势的边缘。主成分分析算法应用于提取的边缘以形成用于符号和手势库的预定义特征向量。欧几里德距离用于测量标志特征向量之间的相似性。选择最近的标志,并播放相应的声音剪辑。所提出的技术用于识别阿拉伯语标志语言字母和最常见的阿拉伯语手势。具体而言,我们将该技术应用于超过150个迹象和手势,精度在三种不同签名者的实时测试时靠近97%。本文讨论了所提出的技术和实验结果的详细。

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