Human action recognition using dimensionality reduction and support vector machine

L. Shiripova, E. Myasnikov
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引用次数: 1

Abstract

The paper is devoted to the problem of recognizing human actions in videos recorded in the optical range of wavelengths. An approach proposed in this paper consists in the detection of a moving person on a video sequence with the subsequent size normalization, generation of subsequences and dimensionality reduction using the principal component analysis technique. The classification of human actions is carried out using a support vector machine classifier. Experimental studies performed on the Weizmann dataset allowed us to determine the best values of the method parameters. The results showed that with a small number of action classes, high classification accuracy can be achieved.
基于降维和支持向量机的人体动作识别
本文致力于在光学波长范围内记录的视频中识别人类行为的问题。本文提出的一种方法是在视频序列中检测运动的人,随后使用主成分分析技术进行尺寸归一化,生成子序列和降维。使用支持向量机分类器对人类行为进行分类。在Weizmann数据集上进行的实验研究使我们能够确定方法参数的最佳值。结果表明,使用较少的动作类,可以达到较高的分类精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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