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Hand sign language recognition for Bangla alphabet based on Freeman Chain Code and ANN

机译:基于Freeman链代码和ANN的BANGLA字母表的手手语识别

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Hand sign language recognition is one of the fundamental steps to overcome the barrier of communication between a deaf-mute and a normal person in the field of computer vision. In this paper, a hand sign language recognition framework is proposed for various Bangla alphabets using Artificial Neural Network (ANN). For that, initially the input image is normalized and the skin area is extracted on the basis of the YCbCr values corresponding to human skin color. The extracted area i.e., hand sign area is converted into a binary image and the gaps in the binary hand sign area are filled through the morphological operations. After that, the boundary edge of the hand sign area is extracted through the canny edge detector and extracts the hand sign region of interest (ROI). Finally, features are extracted from the hand sign ROI using Freeman Chain Code (FCC). The ANN is used for training and classifies the hand sign images. The proposed method is tested using various hand sign images and results are presented to demonstrate the efficiency and effectiveness.
机译:手标志识别是克服聋哑静音与计算机视野领域的普通人之间的通信障碍的基本步骤之一。在本文中,针对使用人工神经网络(ANN)的各种Bangla字母表提出了一种手语识别框架。为此,最初,输入图像被归一化,并且基于对应于人体肤色的YCBCR值提取皮肤区域。提取的区域即,手标签区域被转换成二值图像,并且通过形态操作填充二进制手标签区域中的间隙。之后,通过Canny Edge检测器提取手标签区域的边界边缘,并提取感兴趣的手符号区域(ROI)。最后,使用Freeman Chain Code(FCC)从手册ROI中提取特征。 ANN用于培训并分类手标志图像。使用各种手标记图像测试所提出的方法,并提出了结果以证明效率和有效性。

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