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A novel image-based convolutional neural network approach for traffic congestion estimation

机译:基于新的基于图像的卷积神经网络方法,用于交通拥堵估计

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摘要

Traditional image-based traffic congestion estimation methods generally include two steps, which first extract the vehicles from the surveillance images, then calculate the congestion index using the vehicle counts. When working with vast amount of video frames, these approaches are time-consuming and hardly guarantee the real time detection of traffic congestion. In this study, firstly a specific and accurate definition of traffic congestion is proposed to quantify the level of traffic congestion. Then we construct an image-based traffic congestion estimation framework, in which a traffic parameter layer is integrated to the basic convolutional neural network (CNN) model. The proposed framework can directly perform traffic congestion calculation and estimation, which shortens the processing time and avoids the complicated postprocessing. A dataset of 1400 traffic images including 66,890 vehicles is collected for training the proposed CNN model. Another new dataset of 2400 traffic images including 113,516 vehicles is collected to test the proposed method on estimating traffic congestion. Experimental results show that our proposed approach has better efficiency and stability in both free flow and congested traffic conditions, as well as sunny and rainy scenes.
机译:基于传统的基于图像的流量拥塞估计方法通常包括两个步骤,该步骤首先从监视图像中提取车辆,然后使用车辆计数计算拥堵指数。在使用大量视频帧时,这些方法是耗时的,并且几乎没有保证交通拥堵的实时检测。在本研究中,提出了一种特定和准确的交通拥堵定义,以量化交通拥堵水平。然后,我们构建基于图像的流量拥塞估计框架,其中流量参数层被集成到基本的卷积神经网络(CNN)模型。所提出的框架可以直接执行流量拥塞和估计,缩短处理时间并避免复杂的后处理。收集包括66,890辆车辆的1400个流量图像的数据集以训练所提出的CNN模型。收集包括113,516辆车辆的2400个流量图像的另一个新数据集以测试估计交通拥堵的所提出的方法。实验结果表明,我们所提出的方法在自由流动和拥挤的交通状况以及阳光明媚和多雨场景中具有更好的效率和稳定性。

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