Action Recognition Based Real-time Bangla Sign Language Detection and Sentence Formation

S. Akash, Debobrata Chakraborty, Mehedi Mahmud Kaushik, Barsan Saha Babu, Md. Saniat Rahman Zishan
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Abstract

Sign language is a system of communication that uses visual motions and signs to communicate with persons who are deaf or mute due to a hearing or speech impairment. A real-time Bangla Sign Language (BdSL) detection system was proposed in this paper, which can generate Bangla sentences from a sequence of images or a video feed which can help those who are not familiar with sign language. Blazepose algorithm was used to identify the sign language body posture sequence. After detecting the body posture the data was gathered as a numpy file. A Long Short-Term Memory (LSTM) network was used to train the numpy files since this network can generate predictions based on sequential data. After 85 epochs of training, the model's training accuracy was 93.85%, and its validation accuracy was 87.14%, which indicates that the model's ability to recognize BdSL sentences in real-time is adequate.
基于动作识别的实时孟加拉语手语检测与造句
手语是一种使用视觉动作和手势与因听力或语言障碍而失聪或哑巴的人交流的交流系统。本文提出了一种实时孟加拉语手语检测系统,该系统可以从一系列图像或视频中生成孟加拉语句子,为不熟悉手语的人提供帮助。采用Blazepose算法对手语肢体姿势序列进行识别。在检测到身体姿势后,将数据收集为numpy文件。使用长短期记忆(LSTM)网络来训练numpy文件,因为该网络可以基于顺序数据生成预测。经过85个epoch的训练,该模型的训练准确率为93.85%,验证准确率为87.14%,表明该模型对BdSL句子的实时识别能力是足够的。
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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