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Hand shape classification using DTW and LCSS as similarity measures for vision-based gesture recognition system

机译:使用DTW和LCSS作为基于视觉的手势识别系统的相似性度量的手形分类

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In this paper an approach to classify hand shapes into different classes according to the similarity measures between features is proposed. We show how to use an Exploratory Data Analysis to extract novel, single feature of hand from images. Based on the obtained curve-like shape of the feature, hands are classified into one of 21 possible classes of Croatian sign language using Dynamic Time Warping and Longest Common Subsequence as similarity measures. Performance of the system was evaluated with 1260 images. Results show that high classification accuracy can be obtained from a single feature recognition and a small number of training sample.
机译:本文提出了一种根据特征之间的相似性度量将手形分类为不同类别的方法。我们展示了如何使用探索性数据分析从图像中提取手的新颖,单一特征。根据获得的特征的曲线状形状,使用动态时间规整和最长公共子序列作为相似度度量,将手分类为21种可能的克罗地亚手语类中的一种。用1260张图像评估了系统的性能。结果表明,从单个特征识别和少量训练样本中就可以获得很高的分类精度。

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