Machine Learning-Based Intelligent Video Surveillance in Smart City Framework

M. A. J. Maktoof, Ibraheem H.. M., M. Razzaq, Ahmed Abbas, A. Majdi
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Abstract

The proposed method of using Machine Learning in Motion Detection and Pedestrian Tracking-assisted Intelligent Video Surveillance Systems (ML-IVSS) can be seen as an application of intelligent fusion techniques. ML-IVSS combines the power of motion detection, pedestrian tracking, and machine learning to create a more accurate and efficient surveillance system for smart cities. By fusing these techniques, ML-IVSS can effectively detect unusual behaviors such as trespassing, interruption, crime, or fall-down, and provide accurate depth data from surveillance footage to protect residents. Intelligent fusion techniques can help improve the accuracy and effectiveness of surveillance systems in smart cities, making them safer and more secure for residents. Combination channel models are used at first, and an object area with prominent features is selected for surveillance. Scaled modification and extraction of features are carried out on the presumed object's region. Identifying the low-level characteristic is the first step in incorporating it into neural architectures for deep feature learning. A smart CCTV data set is used to evaluate the proposed method's performance. According to the numerical analysis, the proposed ML-IVSS model outperforms other traditional approaches in terms of abnormal behaviour detection (98.8%), prediction (97.4%), accuracy (96.9%), F1-score (97.1%), precision (95.6%), and recall (96.2%).
智慧城市框架下基于机器学习的智能视频监控
提出的在运动检测和行人跟踪辅助智能视频监控系统(ML-IVSS)中使用机器学习的方法可以看作是智能融合技术的应用。ML-IVSS结合了运动检测、行人跟踪和机器学习的力量,为智慧城市创建了更准确、更高效的监控系统。通过融合这些技术,ML-IVSS可以有效地检测非法侵入、中断、犯罪或跌倒等异常行为,并从监控录像中提供准确的深度数据,以保护居民。智能融合技术可以帮助提高智慧城市监控系统的准确性和有效性,使其对居民更安全。首先采用组合信道模型,选择特征突出的目标区域进行监视。在假定的目标区域上进行尺度修改和特征提取。识别低级特征是将其纳入深度特征学习的神经结构的第一步。使用智能CCTV数据集来评估该方法的性能。数值分析表明,本文提出的ML-IVSS模型在异常行为检测(98.8%)、预测(97.4%)、准确率(96.9%)、f1评分(97.1%)、精密度(95.6%)和召回率(96.2%)方面均优于其他传统方法。
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