Utalk:斯里兰卡手语转换手机应用程序,使用图像处理和机器学习

I. Dissanayake, P.J Wickramanayake, M.A.S Mudunkotuwa, P. Fernando
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引用次数: 3

摘要

聋哑人在社会中由于缺乏手语知识而造成的交流障碍,使他们在日常活动中面临各种困难。许多研究试图利用基于计算机视觉的技术来解释符号并以自然语言表达它们,从而使聋哑人能够轻松地与听力正常的人交流。然而,这些研究大多集中在对静态符号的解释上,对动态符号的理解没有得到很好的探索。理解动态视觉内容(视频)并将其翻译成自然语言是一个具有挑战性的问题。此外,由于手语的差异,为一种手语开发的系统不能直接用于理解另一种手语,例如,为美国手语开发的系统不能用于解释斯里兰卡手语。在这项研究中,我们开发了一个名为Utalk的系统来解释斯里兰卡手语中表达的静态和动态符号。该系统利用计算机视觉和机器学习技术来解读聋哑人演唱的歌曲。Utalk是一款移动应用程序,因此它是非侵入式的,而且成本低廉。我们使用新收集的数据集证明了我们系统的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Utalk: Sri Lankan Sign Language Converter Mobile App using Image Processing and Machine Learning
Deaf and mute people face various difficulties in daily activities due to the communication barrier caused by the lack of Sign Language knowledge in the society. Many researches have attempted to mitigate this barrier using Computer Vision based techniques to interpret signs and express them in natural language, empowering deaf and mute people to communicate with hearing people easily. However, most of such researches focus only on interpreting static signs and understanding dynamic signs is not well explored. Understanding dynamic visual content (videos) and translating them into natural language is a challenging problem. Further, because of the differences in sign languages, a system developed for one sign language cannot be directly used to understand another sign language, e.g., a system developed for American Sign Language cannot be used to interpret Sri Lankan Sign Language. In this study, we develop a system called Utalk to interpret static as well as dynamic signs expressed in Sri Lankan Sign Language. The proposed system utilizes Computer Vision and Machine Learning techniques to interpret sings performed by deaf and mute people. Utalk is a mobile application, hence it is non-intrusive and cost-effective. We demonstrate the effectiveness of the our system using a newly collected dataset.
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