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Dynamic Hand Gesture Based Sign Word Recognition Using Convolutional Neural Network with Feature Fusion

机译:基于动态手势基于卷积神经网络与特征融合的标志字识别

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Gesture-based sign language recognition systems play an important role in human-computer interaction to develop communication between deaf communities and other people. Where the deaf community, hard of hearing, and deaf family members express their feelings and communicate with others. In this case, hand gestures have been a promising subject and applied to the very practical application of sign language recognition (SLR). SLR is highly influenced by the recognition of hand, as the sign word is a form of communicative gesture. However, the diversity and complexities of the gestures of the hand can greatly affect reliability and recognition rates. To solve this problem, this paper introduces an effective sign word recognition system using a deep learning technique, including feature fusion convolutional neural network. In the proposed system, the input image is captured from the live video using a low cost device, such as a webcam and preprocessed hand gesture image. The pre-processing is accomplished with the conversion of YCbCr, binarization, erosion and finally hole fillings. Two channels of CNN are used to extract the features from preprocessed images. The feature fusion is performed at the fully connected layer and this feature is used for gesture classification by the softmax classifier. An experimental setup established in our laboratory environment and the user can recognize the signs of fifteen common words in real-time. The experimental results show high recognition accuracy in gesture-based sign word recognition compared with the state-of-art systems.
机译:基于手势的行语识别系统在人机互动中发挥着重要作用,以在聋人社区和其他人之间开发沟通。哪里聋人社区,听力艰难,聋人家庭成员表达了他们的感受并与他人沟通。在这种情况下,手势是一个有前景的主题,并应用于手语识别的非常实际应用(SLR)。 SLR受到手的识别的影响,因为标志词是一种交际手势的形式。然而,手势的多样性和复杂性可以极大地影响可靠性和识别率。为了解决这个问题,本文介绍了一种使用深度学习技术的有效标志字识别系统,包括特征融合卷积神经网络。在所提出的系统中,输入图像使用低成本设备从实时视频捕获,例如网络摄像头和预处理的手势图像。通过转换YCBCR,二值化,腐蚀和最后孔填充物来完成预处理。两个CNN通道用于从预处理的图像中提取特征。特征融合在完全连接的图层执行,此功能用于SoftMax分类器的手势分类。在我们的实验室环境中建立的实验设置和用户可以实时识别十五个常见词的迹象。实验结果表明,与最先进的系统相比,基于手势的标志词识别的高识别准确性。

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