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Exploiting Deeply Supervised Inception Networks for Automatically Detecting Traffic Congestion on Freeway in China Using Ultra-Low Frame Rate Videos

机译:利用超低帧速率视频在中国自动检测交通拥堵的深度监督网络

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摘要

Traffic congestion detection plays an important role for road management. However, it is difficult to automatically report traffic congestion when it occurs in large-scale road network. One of key challenges for rapidly and precisely identifying early congestion is huge variations in appearance caused by illumination, weather, camera settings and other traffic conditions. To address it, we proposed a traffic-oriented model to classify congestion from large dataset of ultra-low frame rate video captured from traffic surveillance system. The proposed deeply supervised traffic congestion detector has two modules: attention proposal module and deeply supervised inception network. Specifically, within the shallow layers, the binary edge/corner density features are used in attention proposal module to generate the rang of interest (ROI) mask automatically. This strategy keeps the training process focusing on the congestion features without disturbances. Following the attention proposal module, a very deep structure based on the inception network was used together to effectively extract rich and discriminative features then detect traffic congestion. The approach was tested on a self-established dataset based on empirical data, which contains images captured from 14470 surveillance cameras for monitoring 5,215 km of freeway in Shaanxi province, China. The experimental results show that the accuracy of the proposed method could reach 95.77 & x0025; considering various disturbances, conditions and other limitations, which is improved than unsupervised networks.
机译:交通拥堵检测对道路管理起着重要作用。但是,难以在大型道路网络中发生时自动报告交通拥堵。快速且精确地识别早期充血的关键挑战是由照明,天气,摄像机设置和其他交通状况引起的外观的巨大变化。为了解决它,我们提出了一种流量导向的模型,用于对流量监控系统捕获的超低帧速率视频的大型数据集进行分类。建议的深度监督的交通拥堵探测器有两个模块:注意提案模块和深受监督的初始网络。具体地,在浅层内,在注意提案模块中使用二进制边缘/角密度特征,以自动产生感兴趣的rang(ROI)掩模。该策略使培训过程重点关注拥塞功能而没有干扰。在注意提案模块之后,使用基于初始网络的非常深的结构,共同使用,以有效提取丰富和辨别特征,然后检测交通拥堵。该方法基于经验数据在自置的数据集上测试,其中包含从14470个监控摄像机捕获的图像,用于监控陕西省陕西省的高速公路5,215公里。实验结果表明,所提出的方法的准确性可以达到95.77&x0025;考虑到各种干扰,条件和其他限制,这些限制与无监督的网络改善。

著录项

  • 来源
    《Quality Control, Transactions》 |2020年第2020期|21226-21235|共10页
  • 作者单位

    Changan Univ ITSER Xian 710064 Peoples R China|Changan Univ Sch Informat Engn Xian 710064 Peoples R China;

    Changan Univ ITSER Xian 710064 Peoples R China|Changan Univ Sch Elect & Control Engn Xian 710064 Peoples R China;

    Toll Collect Ctr Shaanxi Freeway Xian 710021 Peoples R China;

    Changan Univ Sch Elect & Control Engn Xian 710064 Peoples R China;

    Changan Univ ITSER Xian 710064 Peoples R China|Changan Univ Sch Elect & Control Engn Xian 710064 Peoples R China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Data augmentation; deep learning; freeway; surveillance camera; traffic congestion;

    机译:数据增强;深入学习;高速公路;监控摄像机;交通拥堵;
  • 入库时间 2022-08-18 21:58:57

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