Anomalous Detection System in Crowded Environment using Deep Learning

D. Esan, P. Owolawi, Chuling Tu
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引用次数: 2

Abstract

In recent years, surveillance systems have become very important due to security concerns. These systems are widely used in many applications such as airports, railway stations, shopping malls, crowded sports arenas, military etc., [1]. The wide deployment of surveillance systems has made the detection of anomalous behavioral patterns in video streams to become increasingly important. An anomalous event can be considered as a deviation from the regular scene; however, the distribution of normal and anomalous events is severely imbalanced, since the anomalous behavior events do not frequently occur, hence it is imperative to accurately detect anomalous behavioral pattern from a normal pattern in a surveillance system. This paper proposes a Convolutional Neural Network and Long Short-Term Memory (CNN-LSTM) technique. The CNN is used to extract the features from the image frames and the LSTM is used as a mechanism for remembrance to make quick and accurate detection. Experiments are done on the University of California San Diego dataset using the proposed anomalous behavioral pattern detection system. Compared with other existing methods, experimental analysis demonstrates that CNN-LSTM technique has high accuracy with better parameters tuning. Different analyses were conducted using the publicly available dataset repository that has been used by many researchers in the field of computer vision in the detection of anomalous behavior. The results obtained show that CNN-LSTM outperforms the others with overall F1-score of 0.94; AUC of 0.891 and accuracy of 89%. This result shows that the deployment of the proposed technique in a surveillance detection system can assist the security personnel to detect an anomalous behavioral pattern in a crowded environment.
基于深度学习的拥挤环境异常检测系统
近年来,出于安全考虑,监控系统变得非常重要。这些系统广泛应用于机场、火车站、商场、人流密集的运动场、军事场所等。监控系统的广泛部署使得视频流中异常行为模式的检测变得越来越重要。异常事件可以被认为是对正常场景的偏离;然而,由于异常行为事件并不经常发生,正常和异常事件的分布严重不平衡,因此在监控系统中准确地从正常模式中检测出异常行为模式是势在必行的。本文提出了一种卷积神经网络与长短期记忆(CNN-LSTM)技术。利用CNN从图像帧中提取特征,利用LSTM作为记忆机制进行快速准确的检测。在加州大学圣地亚哥分校的数据集上,使用所提出的异常行为模式检测系统进行了实验。实验分析表明,CNN-LSTM技术具有较高的精度和较好的参数整定效果。使用公开可用的数据集存储库进行不同的分析,该存储库已被计算机视觉领域的许多研究人员用于检测异常行为。结果表明,CNN-LSTM的综合f1得分为0.94,优于其他算法;AUC为0.891,准确度为89%。结果表明,在监控检测系统中部署所提出的技术可以帮助安全人员在拥挤的环境中检测异常行为模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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