基于热视频的人群估计自动决策技术

N. Negied, A. El-Sayed, Asmaa S. Hassaan
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引用次数: 0

摘要

对行人进行计数和检测是一些应用的重要和关键方面,如人群密度估计、活动组织、个人流量控制和监控系统,以防止像朝觐这样的大规模行人聚集的困难和过度拥挤,朝觐是穆斯林每年朝圣者人数不断增加的年度活动。本文基于对两种不同的自动估计人群密度的技术进行一些改进。这两种方法是基于个人运动和身体的热特征。人群计数技术的基本特征是,它们不需要预先存储和训练过的数据;相反,他们使用实时视频流作为输入。此外,它不需要个人的任何干预。因此,这一特性可以很容易地自动估计人群密度。与文献中其他方法相比,这项工作的特别之处在于使用了热视频,而不仅仅是依靠一种方法或结合几种方法来获得人群规模,而是分析结果,以决定哪种方法在不同的场景下更好。本工作旨在使用两种方法估计人群密度,并根据场景的情况决定哪种方法更好、更准确;也就是说,这项工作使用人体的热特征和运动分析来测量视频中的人群规模,再加上使用两种方法的结果分析来决定哪种方法更好。根据许多因素,例如视频中人类的运动状态、遮挡量等,更好的方法可能会因视频而异。本文讨论了这两种方法。第一种是基于捕获个体的热特征,第二种是基于检测个体运动的特征。讨论了这些方法的结果,并进行了不同的实验来证明和确定最准确的方法。实验结果证明了本文方法相对于文献的先进性,如结果部分所示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Decision Technique for the Crowd Estimation Method Using Thermal Videos
Counting and detecting the pedestrians is an important and critical aspect for several applications such as estimation of crowd density, organization of events, individual’s flow control, and surveillance systems to prevent the difficulties and overcrowding in a huge gathering of pedestrians such as the Hajj occasion, which is the annual event for Muslims with the growing number of pilgrims every year. This paper is based on applying some enhancements to two different techniques for automatically estimating the crowd density. These two approaches are based on individual motion and the body’s thermal features. Theessential characteristic of crowd counting techniques is that they do not require a previously stored and trained data; instead they use a live video stream as input. Also, it does not require any intervention from individuals. So, this feature makes it easy to automatically estimate the crowd density. What makes this work special than other approaches in literature is the use of thermal videos, and not just relying on a way or combining several ways to get the crowd size but also analyzing the results to decide which approach is better considering different cases of scenes. This work aims at estimating the crowd density using two methods and decide which method is better and more accurate depending on the case of the scene; i.e., this work measures the crowd size from videos using the heat signature and motion analysis of the human body, plus using the results analysis of both approaches to decide which approach is better. The better approach can vary from video-to-video according to many factors such as the motion state of humans in this video, the occlusion amount, etc. Both approaches are discussed in this paper. The first one is based on capturing the thermal features of an individual and the second one is based on detecting the features of an individual motion. The result of these approaches has been discussed, and different experiments were conducted to prove and identify the most accurate approach. The experimental results prove the advancement of the approach proposed in this paper over the literature as indicated in the result section.
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