美国手语识别的深度卷积实时模型(DCRTM

Hadj Ahmed Bouarara, Bentadj Cheimaa, Mohamed Elhadi Rahmani
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引用次数: 0

摘要

手语是一种表达丰富的交际方式,具有与口语相同的特性。在本文中,作者讨论了使用迁移学习技术来开发一个识别美国手语的智能系统。背后的想法是,与其创建一个新的深度卷积神经网络模型并花费大量时间进行实验,作者使用已经预先训练好的模型来受益于它们的优势。在这项研究中,他们使用了四种不同的模型(YOLOv3,实时模型,VGG16和AlexNet)。获得的结果是非常令人鼓舞的。它们都能识别90%以上的图像。
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Deep Convolutional Real Time Model (DCRTM) for American Sign Language (ASL) Recognition
Sign language is a kind of communication rich of expressions, and it has the same properties as spoken languages. In this paper, the authors discuss the use of transfer learning techniques to develop an intelligent system that recognizes American Sign Language. The idea behind was that rather than creating a new model of deep convolutional neural network and spend a lot of time in experimentations, the authors used already pre-trained models to benefit from their advantages. In this study, they used four different models (YOLOv3, real-time model, VGG16, and AlexNet). The obtained results were very encouraging. All of them could recognize more than 90% of images.
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