室内人群估计的视频分析

Ryan Tan, I. Atmosukarto, Wee Han Lim
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引用次数: 2

摘要

本文演示了使用深度卷积神经网络在视频帧中提供机舱级人群密度估计的安全摄像机镜头。它的一些应用包括对进站列车的客舱人口密度估计。有了这些信息,火车乘客可能会选择在不那么拥挤的车厢上车,这可能会减少火车在车站的停留时间,并体验到更愉快的通勤。在某种程度上,人群水平估计信息也将有助于最大化列车和平台的容量。与在列车上安装新的传感设备相比,利用安全摄像头的画面也将成为列车运营商的一种经济有效的解决方案。出于发布列车车厢视频帧的隐私和安全考虑,本文将在室内行人数据集上展示实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Video Analytics for Indoor Crowd Estimation
This paper demonstrates the usage of security camera footages with deep convolutional neural networks to provide cabin-level crowd density estimates in the video frames. Some applications for this include cabin-level crowd density estimates of incoming trains. With this information, train passengers may choose to board the trains at less crowded cabins, potentially decreasing the dwell time of trains at stations and experiencing a more pleasant commute overall. In a way, the crowd level estimation information will also help to maximize the train and platform capacity. Leveraging on the security camera footages would also serve as a cost-effective solution to the train operator as compared to installing new sensing equipment in the trains. Due to privacy and security concerns of publishing train cabin video frames, this paper will present the experiment results on an indoor pedestrian dataset.
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