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A novel framework for automated monitoring and analysis of high density pedestrian flow

机译:高密度行人流动自动监测和分析的新框架

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摘要

Pedestrian traffic is an important subject of surveillance to ensure public safety and traffic management, which may benefit from intelligent and continuous analysis of pedestrian videos. State-of-the-art methods for intelligent pedestrian surveillance have a number of limitations in automating and deriving useful information of high-density pedestrian traffic (HDPT) using closed circuit television (CCTV) images. This work introduces an automatic and improved HDPT surveillance system by integrating and optimizing multiple computational steps to predict pedestrian distribution from input video frames. A fast and efficient particle image velocimetry (PIV) technique is proposed to yield pedestrian velocities. A machine learning regressor model, boosted Ferns, is used to improve pedestrian count and density estimation: an essential metric for HDPT analysis. A camera perspective model is proposed to improve the speed and position estimates of HDPT by projecting 2D image pixels to 3D world-coordinate dat. All these functional improvements in HDPT velocity and displacement estimations are used as inputs to a sophisticated pedestrian flow evolution model, PEDFLOW to predict HDPT distribution at a future time point, which is a crucial information for pedestrian traffic management. The predicted and simulated HDPT properties (density, velocity) obtained using the proposed framework show low errors when compared to the ground truth data. The proposed framework is computationally efficient, suitable for multiple camera feeds with HDPT videos, and capable of rapidly analyzing and predicting flows of thousands of pedestrians. The paper shows one of the first steps towards fully integrated CCTV-based automated HDPT management system.
机译:行人交通是监测的重要主题,以确保公共安全和交通管理,可能会受益于行人视频的智能和持续分析。智能行人监控的最先进方法在使用闭路电视(CCTV)图像中具有许多在自动化和获取高密度行人交通(HDPT)的有用信息的局限性。通过集成和优化多种计算步骤来预测从输入视频帧预测行人分布来引入自动和改进的HDPT监控系统。提出了一种快速高效的粒子图像速度(PIV)技术以产生行人速度。一种机器学习回归型号,提升蕨类植物,用于改善行人计数和密度估计:HDPT分析的基本度量。建议通过将2D图像像素投影到3D世界坐标DAT来提高HDPT的速度和位置估计的相机透视模型。 HDPT速度和位移估计中的所有这些功能改进用作复杂的行人流量进化模型的输入,PEDFLOW,以预测未来时间点的HDPT分布,这是行人交通管理的重要信息。使用所提出的框架获得的预测和模拟的HDPT属性(密度,速度)在与地面真理数据相比时显示出低误差。所提出的框架是计算的高效,适用于具有HDPT视频的多个相机源,并且能够快速分析和预测成千上万行人的流量。本文展示了完全集成基于CCTV的自动化HDPT管理系统的第一步之一。

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