阿拉伯文手势语指纹识别从深度和强度图像

S. Aly, Basma Osman, Walaa Aly, Mahmoud Saber
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引用次数: 28

摘要

自动阿拉伯手语识别(ArSL)和手指拼写被认为是聋哑人首选的交流方式。本文提出了一种基于SOFTKINECT传感器深度和强度图像的字母阿拉伯手语识别系统。该方法不需要任何额外的手套或任何视觉标记。使用称为PCANet的无监督深度学习方法从深度和强度图像中学习局部特征。然后使用线性支持向量机分类器识别提取的特征。在多用户真实图像数据集上对该方法的性能进行了评价。分别进行了深度和强度图像的组合和深度和强度图像的实验。结果表明,结合深度和强度信息,系统的性能得到了提高,平均精度达到99:5%。
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Arabic sign language fingerspelling recognition from depth and intensity images
Automatic Arabic sign language recognition (ArSL) and fingerspelling considered to be the preferred communication method among deaf people. In this paper, we propose a system for alphabetic Arabic sign language recognition using depth and intensity images which acquired from SOFTKINECT™ sensor. The proposed method does not require any extra gloves or any visual marks. Local features from depth and intensity images are learned using unsupervised deep learning method called PCANet. The extracted features are then recognized using linear support vector machine classifier. The performance of the proposed method is evaluated on dataset of real images captured from multi-users. Experiments using a combination of depth and intensity images and also using depth and intensity images separately are performed. The obtained results show that the performance of the proposed system improved by combining both depth and intensity information which give an average accuracy of 99:5%.
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