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Analysis of pixel level features in recognition of real life dual-handed sign language data set

机译:分析现实双手手势语言数据集的像素级特征

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This paper demonstrates the evaluation of various pixel level features for the dual handed sign language data set. Data sets are collected from the real life scenario. We compare the feature extraction methods like Histogram of Orientation Gradient (HOG), Histogram of Boundary Description (HBD) and the Histogram of Edge Frequency (HOEF). The accuracy of HOG and HBD found up to 71.4% and 77.3% whereas the accuracy of HOEF in real life data set is 97.3% and in ideal condition 98.1%.
机译:本文演示了对双手手势语言数据集各种像素级功能的评估。数据集是从现实生活场景中收集的。我们比较了特征提取方法,如方向梯度直方图(HOG),边界描述直方图(HBD)和边缘频率直方图(HOEF)。发现HOG和HBD的准确性分别高达71.4%和77.3%,而在现实生活数据集中,HOEF的准确性为97.3%,理想情况下为98.1%。

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