Analysis and comparison of various deep learning models to implement suspicious activity recognition in CCTV surveillance

Pub Date : 2023-10-21 DOI:10.3233/idt-230469
Dhruv Saluja, Harsh Kukreja, Akash Saini, Devanshi Tegwal, Preeti Nagrath, Jude Hemanth
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Abstract

The paper aims to analyze and compare various deep learning (DL) algorithms in order to develop a Suspicious Activity Recognition (SAR) system for closed-circuit television (CCTV) surveillance. Automated systems for detecting and classifying suspicious activities are crucial as technology’s role in safety and security expands. This paper addresses these challenges by creating a robust SAR system using machine learning techniques. It analyzes and compares evaluation metrics such as Precision, Recall, F1 Score, and Accuracy using various deep learning methods (convolutional neural network (CNN), Long short-term memory (LSTM) – Visual Geometry Group 16 (VGG16), LSTM – ResNet50, LSTM – EfficientNetB0, LSTM – InceptionNetV3, LSTM – DenseNet121, and Long-term Recurrent Convolutional Network (LRCN)). The proposed system improves threat identification, vandalism deterrence, fight prevention, and video surveillance. It aids emergency response by accurately classifying suspicious activities from CCTV footage, reducing reliance on human security personnel and addressing limitations in manual monitoring. The objectives of the paper include analyzing existing works, extracting features from CCTV videos, training robust deep learning models, evaluating algorithms, and improving accuracy. The conclusion highlights the superior performance of the LSTM-DenseNet121 algorithm, achieving an overall accuracy of 91.17% in detecting suspicious activities. This enhances security monitoring capabilities and reduces response time. Limitations of the system include subjectivity, contextual understanding, occlusion, false alarms, and privacy concerns. Future improvements involve real-time object tracking, collaboration with law enforcement agencies, and performance optimization. Ongoing research is necessary to overcome limitations and enhance the effectiveness of CCTV surveillance.
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分析比较各种深度学习模型在CCTV监控中可疑活动识别的实现
本文旨在分析和比较各种深度学习(DL)算法,以开发用于闭路电视(CCTV)监控的可疑活动识别(SAR)系统。随着技术在安全和安保方面的作用不断扩大,用于检测和分类可疑活动的自动化系统至关重要。本文通过使用机器学习技术创建一个强大的SAR系统来解决这些挑战。它使用各种深度学习方法(卷积神经网络(CNN),长短期记忆(LSTM) -视觉几何组16 (VGG16), LSTM - ResNet50, LSTM - EfficientNetB0, LSTM - InceptionNetV3, LSTM - DenseNet121和长期循环卷积网络(LRCN))分析和比较评估指标,如Precision, Recall, F1 Score和Accuracy。提出的系统改进了威胁识别、破坏威慑、战斗预防和视频监控。它通过从闭路电视录像中准确分类可疑活动,减少对人类安全人员的依赖,并解决人工监控的局限性,从而有助于应急响应。本文的目标包括分析现有作品,从CCTV视频中提取特征,训练鲁棒深度学习模型,评估算法以及提高准确性。结论突出了LSTM-DenseNet121算法的优越性能,在检测可疑活动时,总体准确率达到91.17%。这增强了安全监视功能并缩短了响应时间。该系统的局限性包括主观性、上下文理解、遮挡、误报和隐私问题。未来的改进包括实时对象跟踪、与执法机构的协作以及性能优化。为了克服局限性,提高闭路电视监控的有效性,进行研究是必要的。
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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