使用深度学习的菲律宾手语识别

Myron Darrel L. Montefalcon, Jay Rhald Padilla, Ramon Llabanes Rodriguez
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引用次数: 4

摘要

菲律宾聋人社区继续落后于菲律宾快节奏和技术驱动的社会。菲律宾手语(FSL)的使用为聋哑人的交流做出了贡献,然而,菲律宾大多数人口并不理解FSL。本项目利用计算机视觉获取图像,利用卷积神经网络(CNN) ResNet架构构建FSL自动识别模型,旨在弥合聋人群体与听力多数群体之间的沟通差距。在实验中,使用的数据集是由签名者生成的静态图像,该签名者手势的菲律宾数字符号范围为(0-9)。实验结果表明,在微调后的ResNet-50模型上,当epoch值为15时,验证准确率高达86.7%。在未来的工作中,将实现实时的菲语识别,并收集更多的数据,以实现菲语字母、基本短语和常见问候语的识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Filipino Sign Language Recognition using Deep Learning
The Filipino deaf community continues to lag behind the fast-paced and technology-driven society in the Philippines. The use of Filipino Sign Language (FSL) has contributed to the improvement of communication of deaf people, however, the majority of the population in the Philippines do not understand FSL. This project utilized computer vision in obtaining the images and Convolutional Neural Network (CNN) ResNet architecture in building the automated FSL recognition model, with the goal of bridging the communication gap between the deaf community and the hearing majorities. In the experimentation, the dataset used are static images generated from a signer which gestured Filipino number signs which range from (0-9). Based on experimentation, the best-achieved performance is on fine-tuned ResNet-50 model which obtained a validation accuracy as high as 86.7% when the epoch value equals 15. For future work, real-time FSL recognition will be implemented and more data will be collected to enable recognition of Filipino alphabets, basic phrases, and common greetings.
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