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Video Analysis for Crowd and Traffic Management

机译:人群和交通管理视频分析

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摘要

The Government of India develops the road and transport facilities to reduce traffic congestion in mass gatherings at rush time. Based on the public needs, the video scene detection system provides a video classification technique to analyze the video sequences from various crowd and traffic congestion excellently. This classification technique is most significant in many applications such as video surveillance, traffic control analysis and crowd monitoring. A number of applications for detecting and classifying videos have been proposed in the literature. Scene analysis in the video is a big challenge in many Crowd monitoring and Traffic controlling system. The proposed system presents an automatic video scene detection and analysis method for detecting and classifying crowd and traffic video scenes. Histogram Oriented Gradients (HOG) feature descriptor is extracted features from the video scenes. K Nearest Neighbour (KNN) and Support Vector Machine (SVM) classifiers are used to classify the video scenes. The video scenes are collected from various crowd videos of Tamil Nadu. The experimental results show that KNN with HOG features performs well with 97% accuracy.
机译:印度政府开展道路和运输设施,以减少群众集会的交通拥堵。基于公共需求,视频场景检测系统提供了一种视频分类技术,用于分析各种人群和交通拥堵的视频序列。这种分类技术在许多应用中最重要的是视频监控,交通控制分析和人群监控。在文献中提出了许多用于检测和分类视频的应用。视频中的场景分析在许多人群监测和交通控制系统中是一个很大的挑战。所提出的系统提供了一种自动视频场景检测和分析方法,用于检测和分类人群和交通视频场景。针对直方图取向渐变(HOG)功能描述符是从视频场景中提取的功能。 K最近邻(knn)和支持向量机(SVM)分类器用于对视频场景进行分类。视频场景是从泰国泰国的各种人群视频中收集的。实验结果表明,具有猪特征的KNN具有97%的精度。

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