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Hand Gesture Recognition for Bangla Sign Language Using Deep Convolution Neural Network

机译:使用深卷积神经网络的Bangla手势手势识别

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Around the world, deaf and dumb people are sufferers of all kinds of activities due to a lack of proper sign language interpreters. Our research paper proposes a new hand gesture recognition framework toward Bangla sign language to eliminate the significant communication gap between deaf and non-sign language users. The hand was detected practicing HSV and YCbCr color space. In total thirty-seven (37) characters (8 vowels and 29 consonants) are recognized by deep convolution neural networks. We take 37 classes for 37 alphabets from Bangla sign language. Our framework also aided to gesture recognition system by a new dataset for the Bangla sign language. Our dataset consists of 3219 images from six different people. This new dataset facilitates us to gain an accuracy of 99.22%.
机译:由于缺乏适当的手语解释员,聋人和愚蠢的人是各种活动的患者。我们的研究论文提出了新的手势识别框架,朝向Bangla手语,以消除聋哑人和非手语的重大沟通差距。手中被检测到练习HSV和YC b C r 色彩空间。总共三十七(37)个字符(8元音和29个辅音)被深度卷积神经网络识别。我们从Bangla Sign Language拍摄37个字母表。我们的框架还通过新的数据集进行了手势识别系统,用于Bangla Sign Language。我们的数据集由来自六个不同人的3219张图片组成。这个新数据集有助于我们获得99.22%的准确性。

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