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A comparative study of shape and texture features for finger spelling recognition in big data applications

机译:大数据应用中用于手指拼写识别的形状和纹理特征的比较研究

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摘要

With a wide variety of big data applications, Sign Language Recognition has become one of the most important research areas in the field of human-computer interaction. Despite recent progresses, the task of classifying finger spelling is still very challenging in Sign Language Recognition. The visually similarity of some signs, the invisibility of the thumb and the large amount of variation by different signers are all make the hand shape recognition very challenging. The work presented in this paper aims to evaluate the performance of some state-of-the-art features for static finger spelling of alphabets in sign language recognition. The comparison experiments were implemented and tested using two popular data sets. Based on the experimental results, analysis and recommendations are given on the efficiency and capabilities of the compared features.
机译:随着各种各样的大数据应用,手语识别已成为人机交互领域最重要的研究领域之一。尽管有最近的进展,但是在手语识别中,对手指拼写进行分类的任务仍然非常具有挑战性。一些标志的视觉相似性,拇指的隐形性以及不同标志者的大量变化都使手的形状识别变得非常具有挑战性。本文提出的工作旨在评估手语识别中字母静态手指拼写的一些最新功能的性能。比较实验是使用两个流行的数据集实施和测试的。根据实验结果,对所比较功能的效率和功能进行了分析和建议。

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