使用混合深度学习模型实时识别阿拉伯手语

Talal H. Noor, Ayman Noor, Ahmed F. Alharbi, Ahmed Faisal, Rakan Alrashidi, A. S. Alsaedi, Ghada Alharbi, Tawfeeq Alsanoosy, A. Alsaeedi
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引用次数: 0

摘要

手语是听力残疾人士的重要交流手段。然而,某些语言的手语翻译人员严重短缺,尤其是在沙特阿拉伯。这种短缺导致很大一部分听障人士无法获得服务,尤其是在公共场所。本文旨在利用深度学习技术开发能够识别阿拉伯语手语(ArSL)的系统,从而解决无障碍方面的这一差距。在本文中,我们提出了一种混合模型来捕捉手语的时空方面(即字母和单词)。该混合模型由一个卷积神经网络(CNN)分类器和一个长短期记忆(LSTM)分类器组成,前者用于从手语数据中提取空间特征,后者用于提取时空特征以处理顺序数据(即手部动作)。为了证明我们提出的混合模型的可行性,我们创建了一个包含 20 个不同单词的数据集,为 ArSL 生成了 4000 张图像:10 个静态手势单词和 10 个动态手势单词的 500 个视频。我们提出的混合模型表现出良好的性能,CNN 和 LSTM 分类器的准确率分别达到 94.40% 和 82.70%。这些结果表明,我们的方法可以显著提高沙特阿拉伯听障群体的通信无障碍程度。因此,本文标志着在促进包容性和提高听障人士生活质量方面迈出了重要一步。
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Real-Time Arabic Sign Language Recognition Using a Hybrid Deep Learning Model
Sign language is an essential means of communication for individuals with hearing disabilities. However, there is a significant shortage of sign language interpreters in some languages, especially in Saudi Arabia. This shortage results in a large proportion of the hearing-impaired population being deprived of services, especially in public places. This paper aims to address this gap in accessibility by leveraging technology to develop systems capable of recognizing Arabic Sign Language (ArSL) using deep learning techniques. In this paper, we propose a hybrid model to capture the spatio-temporal aspects of sign language (i.e., letters and words). The hybrid model consists of a Convolutional Neural Network (CNN) classifier to extract spatial features from sign language data and a Long Short-Term Memory (LSTM) classifier to extract spatial and temporal characteristics to handle sequential data (i.e., hand movements). To demonstrate the feasibility of our proposed hybrid model, we created a dataset of 20 different words, resulting in 4000 images for ArSL: 10 static gesture words and 500 videos for 10 dynamic gesture words. Our proposed hybrid model demonstrates promising performance, with the CNN and LSTM classifiers achieving accuracy rates of 94.40% and 82.70%, respectively. These results indicate that our approach can significantly enhance communication accessibility for the hearing-impaired community in Saudi Arabia. Thus, this paper represents a major step toward promoting inclusivity and improving the quality of life for the hearing impaired.
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