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Recognition of human actions using motion history information extracted from the compressed video

机译:使用从压缩视频中提取的运动历史信息识别人类动作

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摘要

Human motion analysis is a recent topic of interest among the computer vision and video processing community. Research in this area is motivated by its wide range of applications such as surveillance and monitoring systems. In this paper we describe a system for recognition of various human actions from compressed video based on motion history information. We introduce the notion of quantifying the motion involved, through what we call Motion Flow History (MFH). The encoded motion information readily available in the compressed MPEG stream is used to construct the coarse Motion History Image (MM) and the corresponding MFH. The features extracted from the static MHI and MFH compactly characterize the spatio-temporal and motion vector information of the action. Since the features are extracted from the partially decoded sparse motion data, the computational load is minimized to a great extent. The extracted features are used to train the KNN, Neural network, SVM and the Bayes classifiers for recognizing a set of seven human actions. The performance of each feature set with respect to various classifiers are analyzed.
机译:人体运动分析是计算机视觉和视频处理社区中最近关注的话题。该领域的研究受到监视和监视系统等广泛应用的推动。在本文中,我们描述了一种基于运动历史信息从压缩视频中识别各种人类动作的系统。我们通过所谓的运动流历史(MFH)引入了量化运动的概念。在压缩的MPEG流中容易获得的编码运动信息用于构造粗略的运动历史图像(MM)和相应的MFH。从静态MHI和MFH中提取的特征紧凑地描述了动作的时空和运动矢量信息。由于特征是从部分解码的稀疏运动数据中提取的,因此最大程度地减小了计算负荷。提取的特征用于训练KNN,神经网络,SVM和贝叶斯分类器,以识别一组七个人类动作。分析了各种分类器的每个功能集的性能。

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