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A Survey on Bayesian Learning Model for Human Action Recognition

机译:贝叶斯人体动作识别学习模型研究

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Human action recognition is to judge human action by analyzing action characteristics in the fields of computer vision and video surveillance. As the development of machine learning technique, the application of Bayesian Learning Model is increasing in related fields. In order to analyze the characteristics of human action and then recognize human action, this paper introduce a survey on Bayesian Learning Model for Human Action Recognition. The paper focuses on Bayesian handcrafted and deep learning models, and evaluate the state-of-the-art benchmark datasets, e.g., Weizmann, KTH, MSR-3D, HOHA, and UCF101. In this paper, all papers are published ranging from 2007 to 2016, which provides an overview of the progress in this area.
机译:人体动作识别是通过分析计算机视觉和视频监控领域的动作特征来判断人体动作。随着机器学习技术的发展,贝叶斯学习模型在相关领域的应用正在增加。为了分析人类行为的特征然后识别人类行为,本文对人类行为识别的贝叶斯学习模型进行了概述。本文着重于贝叶斯手工和深度学习模型,并评估了最新的基准数据集,例如Weizmann,KTH,MSR-3D,HOHA和UCF101。在本文中,所有论文的发表时间为2007年至2016年,概述了该领域的进展。

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