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Indian sign language recognition using Krawtchouk moment-based local features

机译:使用Krawtchouk基于矩的局部特征进行印度手语识别

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In this paper, Krawtchouk moment-based shape features at lower orders are proposed for Indian sign language (ISL) recognition system which gives local information about the shape from a specific region of interest. The shape recognition capability of Krawtchouk moment-based local features is verified on two databases: the standard Jochen Triesch's database and 26 ISL alphabets which are collected from 72 different subjects, with variations in position, scale and rotation. Feature selection is performed to minimise redundancy. The effect of order and feature dimensionality for different classifiers is studied. Results show that Krawtchouk moment-based local features are found to exhibit user, scale, rotation and translation invariance. Moreover, they have shape identification capability.
机译:在本文中,针对印度手语(ISL)识别系统,提出了一种基于Krawtchouk基于矩的低阶形状特征,该特征可从感兴趣的特定区域提供有关形状的局部信息。在两个数据库上验证了基于Krawtchouk矩的局部特征的形状识别能力:标准的Jochen Triesch数据库和26个ISL字母,这些字母是从72个不同的主题中收集的,并且位置,比例和旋转度都有变化。执行功能选择以最大程度地减少冗余。研究了顺序和特征维数对不同分类器的影响。结果表明,发现基于Krawtchouk矩的局部特征表现出用户,比例,旋转和平移不变性。而且,它们具有形状识别能力。

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