基于机器学习的摩洛哥手语识别

S. Abdelouahed, Cherrate Meryem, Yahyaouy Ali, Aarab Abdellah
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引用次数: 0

摘要

世界人口的5%以上(4.66亿人)患有致残性听力损失:其中400万是儿童。听力损失的人通常通过口语进行交流,并且可以从人工耳蜗等辅助设备中受益。然而,聋人有严重的听力损失,使用手语与他人交流,这需要很少或根本没有听力。为了方便聋哑人与不懂手语的正常人之间的交流,我们在本文中提出了一个允许手语文本转录的系统。开发的系统将能够在第一步使用机器学习和图像处理来识别手语字母。仿真结果表明了该模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Moroccan sign language recognition based on machine learning
More than 5% of the world's population (466 million people) suffer from a disabling hearing loss: 4 million are children. People with hearing loss usually communicate through spoken language and can benefit from assistive devices such as cochlear implants. However, deaf people have profound hearing loss and use sign language to communicate with others, which involves little or no hearing. To facilitate communication between deaf people and normal people who do not know sign language, we have proposed in this paper a system that allows textual transcription of sign language. The developed system will be able, in a first step, to recognize the sign language alphabet using machine learning and image processing. Simulation results have shown the efficiency of the developed model.
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