Arabic Sign Language Characters Recognition Based on Deep Learning Approach and a Simple Linear Classifier

IF 0.9 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
Ahmad Hasasneh
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引用次数: 6

Abstract

One of the best ways of communication between deaf people and hearing people is based on sign language or so-called hand gestures. In the Arab society, only deaf people and specialists could deal with Arabic sign language, which makes the deaf community narrow and thus communicating with normal people difficult. In addition to that, studying the problem of Arabic sign language recognition (ArSLR) has been paid attention recently, which emphasizes the necessity of investigating other approaches for such a problem. This paper proposes a novel ArSLR scheme based on an unsupervised deep learning algorithm, a deep belief network (DBN) coupled with a direct use of tiny images, which has been used to recognize and classify Arabic alphabetical letters. The use of deep learning contributed to extracting the most important features that are sparsely represented and played an important role in simplifying the overall recognition task. In total, around 6,000 samples of the 28 Arabic alphabetic signs have been used after resizing and normalization for feature extraction. The classification process was investigated using a softmax regression and achieved an overall accuracy of 83.32%, showing high reliability of the DBN-based Arabic alphabetical character recognition model. This model also achieved a sensitivity and a specificity of 70.5% and 96.2%, respectively.
基于深度学习方法和简单线性分类器的阿拉伯手语字符识别
聋哑人和正常人之间最好的交流方式之一是基于手语或所谓的手势。在阿拉伯社会,只有聋哑人和专家才能使用阿拉伯手语,这使得聋哑人群体狭窄,难以与正常人交流。此外,近年来对阿拉伯语手语识别问题的研究备受关注,强调了研究其他方法解决该问题的必要性。本文提出了一种新的基于无监督深度学习算法的ArSLR方案,即深度信念网络(DBN)与直接使用微小图像相结合,该方案已被用于识别和分类阿拉伯字母。深度学习的使用有助于提取稀疏表示的最重要特征,并在简化整个识别任务中发挥重要作用。在调整大小和归一化后,总共使用了28个阿拉伯字母符号的大约6000个样本进行特征提取。使用softmax回归对分类过程进行研究,总体准确率达到83.32%,表明基于dbn的阿拉伯字母字符识别模型具有较高的可靠性。该模型的敏感性和特异性分别为70.5%和96.2%。
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来源期刊
Jordanian Journal of Computers and Information Technology
Jordanian Journal of Computers and Information Technology Computer Science-Computer Science (all)
CiteScore
3.10
自引率
25.00%
发文量
19
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