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首页> 外文期刊>Research journal of applied science, engineering and technology >Multi-Features Encoding and Selecting Based on Genetic Algorithm for Human Action Recognition from Video
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Multi-Features Encoding and Selecting Based on Genetic Algorithm for Human Action Recognition from Video

机译:基于遗传算法的视频人动作识别多特征编码与选择

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摘要

In this study, we proposed multiple local features encoded for recognizing the human actions. The multiple local features were obtained from the simple feature description of human actions in video. The simple features are two kinds of important features, optical flow and edge, to represent the human perception for the video behavior. As the video information descriptors, optical flow and edge, which their computing speeds are very fast and their requirement of memory consumption is very low, can represent respectively the motion information and shape information. Furthermore, key local multi-features are extracted and encoded by GA in order to reduce the computational complexity of the algorithm. After then, the Multi-SVM classifier is applied to discriminate the human actions.
机译:在这项研究中,我们提出了编码为识别人类行为的多个局部特征。从视频中人类动作的简单特征描述中获得了多个局部特征。简单特征是两种重要特征,光流和边缘,代表了人们对视频行为的感知。作为视频信息描述符,光流和边缘,它们的计算速度非常快,它们对内存消耗的要求非常低,可以分别表示运动信息和形状信息。此外,GA提取了关键的局部多特征并进行了编码,以降低算法的计算复杂度。然后,应用Multi-SVM分类器来区分人为行为。

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