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A FIRST STAGE COMPARATIVE SURVEY ON HUMAN ACTIVITY RECOGNITION METHODOLOGIES

机译:人类活动识别方法的第一阶段比较研究

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The development of vision-based human activity recognition and analysis systems has been a matter of great interest to both the research community and practitioners during the last 20 years. Traditional methods that require a human operator watching raw video streams are nowadays deemed as at least ineffective and expensive. New, smart solutions in automatic surveillance and monitoring have emerged, propelled by significant technological advances in the fields of image processing, artificial intelligence, electronics and optics, embedded computing and networking, molding the future of several applications that can benefit from them, like security and healthcare. The main motivation behind it is to exploit the highly informative visual data captured by cameras and perform high-level inference in an automatic, ubiquitous and unobtrusive manner, so as to aid human operators, or even replace them. This survey attempts to comprehensively review the current research and development on vision-based human activity recognition. Synopses from various methodologies are presented in an effort to garner the advantages and short-comings of the most recent state-of-the-art technologies. Also a first-level self-evaluation of methodologies is also proposed, which incorporates a set of significant features that best describe the most important aspects of each methodology in terms of operation, performance and others and weighted by their importance. The purpose of this study is to serve as a reference for further research and evaluation to raise thoughts and discussions for future improvements of each methodology towards maturity and usefulness.
机译:在过去的20年中,基于视觉的人类活动识别和分析系统的开发引起了研究界和从业者的极大兴趣。如今,要求人类操作员观看原始视频流的传统方法至少被认为是无效且昂贵的。在图像处理,人工智能,电子和光学,嵌入式计算和网络领域的重大技术进步的推动下,出现了自动监视和监控领域的新型智能解决方案,塑造了可以从中受益的多种应用的未来和医疗保健。其背后的主要动机是利用摄像机捕获的高度信息化的视觉数据,并以自动,无所不在和不干扰的方式执行高级推断,以帮助操作人员,甚至替代它们。该调查试图全面回顾基于视觉的人类活动识别的当前研究与开发。提出了各种方法的摘要,以期获得最新技术的优点和缺点。还提出了一种方法学的一级自我评估,该方法结合了一组重要特征,这些特征可以最好地描述每种方法论在操作,性能和其他方面的最重要方面,并按其重要性进行加权。本研究的目的是作为进一步研究和评估的参考,以提出各种想法和讨论,以进一步完善每种方法的成熟度和实用性。

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