Sign Language Gesture to Speech Conversion Using Convolutional Neural Network

Shreya Tope, Sadnyani Gomkar, Pukhraj Rathkanthiwar, Aayushi Ganguli, P. Selokar
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引用次数: 0

Abstract

A genuine disability prevents a person from speaking. There are numerous ways for people with this condition to communicate with others, including sign language, which is one of the more widely used forms of communication. Human body language can be used to communicate with one another using sign language, where each word is represented by a specific sequence of gestures. The goal of the paper is to translate human sign language into speech that can interpret human gestures. Through a deep convolution neural network, we first construct the data-set, save the hand gestures in the database, and then use an appropriate model on these hand gesture visuals to test and train the system. When a user launches the application, it then detects the gestures that are saved inthe database and displays the corresponding results. By employing this system, it is possible to assist those who are hard of hearing while simultaneously making communication with them simpler for everyone else.
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用卷积神经网络进行手语手势到语音的转换
真正的残疾使一个人不能说话。有这种情况的人有很多方式与他人交流,包括手语,这是一种更广泛使用的交流形式。人类的肢体语言可以用来通过手语进行交流,其中每个单词都由特定的手势序列表示。这篇论文的目标是将人类的手语翻译成可以解释人类手势的语音。首先通过深度卷积神经网络构建数据集,将手势保存在数据库中,然后在这些手势视觉上使用合适的模型对系统进行测试和训练。当用户启动应用程序时,它会检测保存在数据库中的手势,并显示相应的结果。通过使用这个系统,有可能帮助那些有听力障碍的人,同时使其他人更容易与他们交流。
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来源期刊
International Journal of Next-Generation Computing
International Journal of Next-Generation Computing COMPUTER SCIENCE, THEORY & METHODS-
自引率
66.70%
发文量
60
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