Sign Tone: A Deep Learning-Based Deaf Companion System for Two Way Communication Between Deaf and Non-Deaf Individuals

Harish Dr, Dr. C. Meenakshi
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Abstract

Communication is essential to express and receive information, knowledge, ideas, and views among people, but it has been quite a while to be an obstruction for people with hearing and mute disabilities. Sign language is one method of communicating with deaf people. Though there is sign language to communicate with non-sign people it is difficult for everyone to interpret and understand. The performance of existing sign language recognition approaches is typically limited. Developing an assistive device that will translate the sign language to a readable format will help the deaf-mutes to communicate with ease to the common people. Recent advancements in the development of deep learning, deep neural networks, especially Temporal convolutional networks (TCNs) have provided solutions to the communication of deaf and mute individuals. In this project, the main objective is to design Deaf Companion System for that to develop SignNet Model to provide two-way communication of deaf individuals and to implement an automatic speaking system for deaf and mute people. It provides two-way communication for all classes of people (deaf-and-mute, hard of hearing, visually impaired, and non-signers) and can be scaled commercially. The proposed system, consists of three modules; the sign recognition module (SRM) that recognizes the signs of a deaf individual using TCN, the speech recognition using Hidden Marko Model and synthesis module (SRSM) that processes the speech of a non-deaf individual and converts it to text, and an Avatar module (AM) to generate and perform the corresponding sign of the non-deaf speech, which were integrated into the sign translation companion system called deaf companion system to facilitate the communication from the deaf to the hearing and vice versa. The proposed model is trained on Indian Sign Language. Then developed a web-based user interface to deploy SignNet Model for ease of use. Experimental results on MNIST sign language recognition datasets validate the superiority of the proposed framework. The TCN model gives an accuracy of 98.5%..
Sign Tone:基于深度学习的聋人伴侣系统,用于聋人和非聋人之间的双向交流
交流是人与人之间表达和接收信息、知识、思想和观点的必要手段,但对于听障和哑障人士来说,交流却一直是个障碍。手语是与聋人交流的一种方法。虽然有与非手语者交流的手语,但每个人都很难解释和理解。现有的手语识别方法通常性能有限。开发一种能将手语翻译成可读格式的辅助设备,将有助于聋哑人与普通人轻松交流。最近,深度学习、深度神经网络,特别是时序卷积网络(TCN)的发展为聋哑人的交流提供了解决方案。在本项目中,主要目标是设计聋人陪伴系统,开发 SignNet 模型,为聋人提供双向交流,并为聋哑人实现自动说话系统。该系统可为所有类别的人(聋哑人、重听人、视障人和非手语者)提供双向交流,并可进行商业扩展。拟议的系统由三个模块组成:使用 TCN 识别聋人手势的手势识别模块 (SRM)、使用隐马尔科模型和合成模块处理非聋人语音并将其转换为文本的语音识别模块 (SRSM),以及生成和执行非聋人语音的相应手势的阿凡达模块 (AM)。所提出的模型在印度手语上进行了训练。然后开发了一个基于网络的用户界面来部署 SignNet 模型,以方便使用。在 MNIST 手语识别数据集上的实验结果验证了拟议框架的优越性。TCN 模型的准确率达到 98.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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