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Using Gabor filter bank with downsampling and SVM for visual sign language alphabet recognition

机译:将Gabor滤波器组与下采样和SVM结合使用以进行视觉手语字母识别

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With the increasing advances in computer vision, the research on automated human gesture and sign language has attracted the attention of many researchers. It has many applications for human-computer interaction helping persons with hearing impairment in smart environments. In this paper, we focus on static hand visual features to build a system for recognizing hand and finger gestures representing different sign language alphabets. After hand segmentation, the proposed method employs texture based features extracted by down-sampling Gabor-transformed images using multiple scales and orientations. Then, a support vector machine is used for multi-class classification. The evaluation of the proposed approach on a benchmark dataset for the American sign language has reported over 95% overall accuracy with several signs perfectly recognized.
机译:随着计算机视觉技术的不断发展,对自动手势和手语的研究引起了许多研究者的关注。它具有许多人机交互应用程序,可帮助智能环境中的听力障碍人士。在本文中,我们专注于静态手部视觉功能,以构建用于识别代表不同手语字母的手部和手指手势的系统。在手分割之后,所提出的方法采用了基于纹理的特征,这些特征是通过使用多个比例和方向对Gabor变换的图像进行下采样而提取的。然后,将支持向量机用于多类分类。在针对美国手语的基准数据集上对提议的方法进行的评估报告,其总体准确性超过95%,并且多个手语得到了公认。

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