Implementation of human action recognition using image parsing techniques

S. Sen, Moloy Dhar, Susrut Banerjee
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引用次数: 8

Abstract

Human activity recognition plays a significant role in human-to-human interaction and interpersonal relations. Because it provides information about the identity of a person, their personality, and psychological state, it is difficult to extract. The human ability to recognize another person's activities is one of the main subjects of study of the scientific areas of computer vision and machine learning. As a result of this research, many applications, including video surveillance systems, human-computer interaction, and robotics for human behavior characterization, require a multiple activity recognition system. In image and video analysis, human activity recognition is an important research direction. In the past, a large number of papers have been published on human activity recognition in video and image sequences. In this paper, we provide a comprehensive survey of the recent development of the techniques, including methods, systems, and quantitative evaluation of the performance of human activity recognition. The experimental results show that our method can significantly improve classification, interpretation, and retrieval performance for the video images. The novelty of this paper is twofold. First, to capture the video images of human. Secondly, to identify the different types of action performed by human.
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使用图像解析技术实现人体动作识别
人类活动识别在人与人之间的互动和人际关系中起着重要的作用。因为它提供了关于一个人的身份、个性和心理状态的信息,所以很难提取出来。人类识别他人活动的能力是计算机视觉和机器学习科学领域研究的主要课题之一。由于这项研究的结果,许多应用,包括视频监控系统、人机交互和用于人类行为表征的机器人,都需要一个多活动识别系统。在图像和视频分析中,人体活动识别是一个重要的研究方向。在过去,关于视频和图像序列中的人类活动识别已经发表了大量的论文。在本文中,我们提供了技术的最新发展的全面调查,包括方法,系统和人类活动识别性能的定量评估。实验结果表明,该方法可以显著提高视频图像的分类、判读和检索性能。这篇论文的新颖之处有两点。首先,捕捉人类的视频图像。其次,识别人类所执行的不同类型的动作。
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