基于简单结构CNN的交通密度估计

Muhammad Ardi Putra, A. Harjoko, Wahyono
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引用次数: 0

摘要

交通拥堵可能是大城市中经常遇到的一个问题。目前,大多数交通控制系统仍然无法捕获交通数据,这意味着交通灯无法被编程为自适应。本文提出了一种基于卷积神经网络的交通密度估计系统。为了做到这一点,从一个道路监控摄像机的视频帧被分成几个块。然后使用CNN来预测每个街区是否被车辆占用。这样就可以估计出每帧的流量密度。结果表明,最简单的CNN模型仅包含27,074个权重和偏差,对训练数据和验证数据的准确率分别达到97.47%和96.57%。处理速度本身是不错的,因为系统能够以大约每秒15.52帧的速度运行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation of Traffic Density Using CNN with Simple Architecture
Traffic congestion might be a problem that is commonly encountered in large cities. Currently, most traffic control systems are still unable to capture traffic data, which means that traffic lights cannot be programmed to be adaptive. In this research paper, a traffic density estimation system based on Convolutional Neural Network was created. In order to do so, a video frame from a road surveillance camera was divided into several blocks. The CNN was then used to predict whether each of those blocks was occupied by vehicles. By doing so, the traffic density of each frame is able to be estimated. The result showed that the simplest CNN model, which only consisted of 27,074 weights and biases, achieved the accuracy of 97.47% and 96.57% towards training and validation data, respectively. The processing speed itself is decent since the system was able to run at approximately 15.52 frames per second.
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