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Visual analysis of socio-cognitive crowd behaviors for surveillance: A survey and categorization of trends and methods

机译:用于监视的社会认知人群行为的可视化分析:趋势和方法的调查和分类

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摘要

Monitoring and inferring socio-cognitive behaviors through crowd analysis can help us to understand many processes. Be it people in crowded environments, road traffic or even a flock of fish, situational awareness becomes critical for creating adequate disaster response, providing incident management, exercising control, etc. Recent researches have indicated that crowd modeling is conventionally based on density analysis. However, socio-cognitive behavior studies have demonstrated that crowds often display a wide variety of behaviors that arise spontaneously from the collective motions of unconnected individuals. Therefore, behavior analysis employing physics-based approaches only, thereby neglecting the socio-psychological aspects, may present diverse challenges to accurate inference. This means that by identifying and modeling some of the interacting agents that underpin the evolution of such behaviors, we can deliver contexts that can help in the autonomous analysis of social and antisocial behaviors in crowded environments. This paper discusses these issues from the machine vision perspective. In particular, socio-cognitive models of crowds are linked to low-level mechanisms of crowd modeling and feature extraction. A survey of recent works on crowd behavior analysis is conducted under a proposed behavioral categorization based on the level of the performed analysis and identified behaviors. Finally, discussions and recommendations are provided toward the advancement in the field.
机译:通过人群分析监测和推断社会认知行为可以帮助我们理解许多过程。无论是在拥挤的环境中,在道路交通中,还是在鱼群中的人们,态势感知对于创建足够的灾难响应,提供事件管理,执行控制等至关重要。最近的研究表明,人群建模通常基于密度分析。但是,社会认知行为研究表明,人群经常表现出各种各样的行为,这些行为是由无联系的个体的集体运动自发产生的。因此,仅采用基于物理学的方法进行行为分析,从而忽略了社会心理学方面的内容,可能会给准确推断带来各种挑战。这意味着,通过识别和建模支持此类行为演变的某些交互主体,我们可以提供有助于在拥挤环境中对社会和反社会行为进行自主分析的上下文。本文从机器视觉的角度讨论了这些问题。特别是,人群的社会认知模型与人群建模和特征提取的低级机制相关。根据已执行的分析和识别的行为的级别,在建议的行为分类下对人群行为分析的最新工作进行了调查。最后,讨论和提出建议以促进该领域的发展。

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