人群中行人检测的深度学习框架研究

Shaamili R
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引用次数: 0

摘要

在人口密集的城市,我们经常发现政治会议、宗教节日、音乐会和购物中心的活动等拥挤的活动,这些活动有更多的安全问题。智能监控系统在大城市中用于保障人群安全,使人群安全变得更简单、更准确。然而,针对人群提出的监控系统是由人工代理进行监控的,效率低下,容易出错,而且难以控制。即使在人群中使用基于深度学习的特征工程,人群分析的许多变体仍然缺乏关注,并且在技术上没有得到解决。考虑到这种情况,智能系统需要最先进的技术来监控人群的安全。人群分析通常分为人群静态分析和人群行为分析。本文更多地探讨了人群行为分析,行人和群体检测,描述了在人群图像中被注意到的运动。随后,分析了当前行人检测方法、数据集和评估标准的问题。关键词:人群分析,行人和群体检测,深度学习,人群物联网分析,人类活动识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Research Perceptive on Deep Learning Framework for Pedestrian Detection in a Crowd
In populated cities, we often find crowded events like political meetings, religious festivals, music concerts, and events in shopping malls, which have more safety issues. Smart surveillance systems are used in big cities to keep crowds safe and make crowd security less complicated and more accurate. However, the surveillance systems proposed for a crowd are monitored by human agents, which are inefficient, error-prone, and overwhelming. Even with deep learning-based feature engineering in crowds, many variants of crowd analysis still lack attention and are technically unaddressed. Considering this scenario, the smart system requires the most advanced techniques to monitor the security of the crowd. Crowd analysis is commonly divided into crowd statics and behavior analysis. This paper explores more about crowd behaviour analysis, pedestrian and group detection which describes the movements that are noticed in the crowd image. Subsequently, the issues of the current methodology of pedestrian detection, datasets, and evaluation criteria are analyzed. Keyword : Crowd Analysis, Pedestrian and group detection, deep learning, Crowd IoT analysis, Human Activity Recognition.
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