基于计算机视觉的人体活动识别系统研究、挑战与应用

A. F., Sukhwinder Singh
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引用次数: 9

摘要

为了监视目的,研究人员使用了许多方法,但基于计算机视觉的人类活动识别(HAR)技术/系统最受关注,因为它们利用摄像机记录的细节自动区分人类行为和运动。但从视频中准确、及时地提取人类活动和行为信息是普适计算环境下最重要和最困难的任务。由于HAR系统在医疗、安防、视觉监控、视频恢复、娱乐和异常行为检测等领域的广泛应用,系统的准确性是研究人员最重要的因素。本文对现有的基于视频或视觉的HAR系统进行了简要的综述,从活动识别、活动分析和视觉内容表示决策三个方面找出了它们面临的挑战和应用。在许多应用中,系统识别时间和准确性是最重要的因素,由于自动化系统中使用的简单或低质量类型的摄像机的增加,系统识别时间和准确性受到影响。因此,为了获得更好的准确性和快速响应,使用要求高且计算智能的分类技术,如深度学习和机器学习,是研究人员更好的选择。在本调查中,我们对2010年至2020年基于计算智能分类技术的HAR研究进行了讨论,以便更好地分析系统的优缺点、面临的挑战以及HAR未来的应用方向。我们还提出了一些可访问的问题和想法,这些问题和想法应该在利用机器学习和深度学习原理的HAR系统的未来研究中讨论,因为它们具有很强的相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computer Vision-based Survey on Human Activity Recognition System, Challenges and Applications
For surveillance purpose, lots of method were used by the researchers but computer vision based Human Activity Recognition (HAR) technologies/systems received the most interest because they automatically distinguish human behaviour and movements from video data utilizing recorded details from cameras. But the extraction of accurate and opportune information from video of human’s activities and behaviours is most important and difficult task in pervasive computing environment. Due to lots of applications of HAR systems like in medical field, security, visual monitoring, video recovery, entertainment and irregular behaviour detection, the accuracy of system is most important factors for researchers. This review article presents a brief survey of the existing video or vision-based HAR system to find out their challenges and applications in three aspects such as recognition of activities, activity analysis, and decision from visual content representation. In many applications, system recognition time and accuracy is most important factor and it is affected due to an increase in the usage of simple or low quality type cameras for automated systems. So, to obtain a better accuracy and fast responses, the usage of demanding and computationally intelligent classification techniques such as deep learning and machine learning is a better option for researchers. In this survey, we addressed numerous computationally intelligent classification techniques-based research for HAR from 2010 to 2020 for a better analysis of the benefits and drawbacks of systems, the challenges faced and applications with future directions for HAR. We also present some accessible problems and ideas that should be discussed in future research for the HAR system utilizing machine learning and deep learning principles due to their strong relevance.
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