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American Sign Language Alphabets Recognition using Hand Crafted and Deep Learning Features

机译:使用手工和深度学习功能进行美国手语字母识别

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Sign language is evolving as an inevitable communication method for the hearing impaired persons. The basic element of the sign language is the sign language alphabets. In this paper, a combination of hand crafted features and deep learning method is used to classify the signs in a more accurate manner. The skin color based YCbCr segmentation method and local binary pattern is applied for accurate shape segmentation and for texture features or local shape information. The transfer learning framework (VGG-19) is fine-tuned to obtain the features that are then fused with hand crafted features by serial based fusion technique. Finally, these features are given to a SVM classifier to classify the signs.
机译:手语正在发展成为听力障碍人士不可避免的交流方式。手语的基本元素是手语字母。在本文中,结合了手工制作的特征和深度学习方法,可以更准确地对标志进行分类。基于肤色的YCbCr分割方法和局部二值模式适用于精确的形状分割以及纹理特征或局部形状信息。对转移学习框架(VGG-19)进行微调,以获取特征,然后通过基于序列的融合技术将特征与手工特征融合。最后,将这些功能提供给SVM分类器以对符号进行分类。

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