基于深度卷积神经网络的印度手语手势识别

M. Varsha, C. Nair
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引用次数: 6

摘要

沟通在人的生活中是极其重要的,最广泛使用的沟通方式是口头沟通。但是有些人有听力和语言障碍,他们不能口头交流,他们用来交流的语言是手语。在印度,人们使用印度手语(ISL)。这些语言是使用各种视觉符号或手势的视觉语言。大多数人都没有意识到这些手势的语义,这就造成了两个社区之间的沟通差距。所以需要一个自动系统。在美国手语领域已经做了很多研究,但不幸的是,在ISL的情况下还没有。这是由于缺乏标准数据集和语言的变化。这项工作的目的是识别ISL手势并将其转换为文本。目前,使用深度CNN (Inception V3模型)实现图像识别模型,该模型接受输入图像,经过一系列层,生成输出。我们已经达到了93%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Indian Sign Language Gesture Recognition Using Deep Convolutional Neural Network
Communication is extremely important in ones life and the most widely used type of communication is verbal communication. But there are people with hearing and speech impairment who cannot communicate verbally and the language which they use for communication is sign language. And in India, the Indian Sign Language (ISL) is used. These languages are visual language which uses a variety of visual signs or gestures. The majority of the people are not aware of the semantics of these gesture and this creates a communication gap between both the community. So there is a need for an automatic system. There has been a lot of research done in the field of American Sign language but unfortunately not in the case of ISL. This is due to lack of standard dataset and the variation in the language. The aim of this work is to recognize ISL gestures and convert it into text. Currently, an image recognition model was implemented using deep CNN (Inception V3 model) which accepts input image and it is passed through a series of layers and the output is generated. We have achieved an accuracy of 93%.
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