Qualitative traffic analysis using image processing and time-delayed neural network

S. N. Razavi, M. Fathy
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引用次数: 4

Abstract

We present an online, feature-based approach to estimate traffic qualitative parameters from a sequence of traffic images. Considering the factor of time and attempting to simulate human behavior, a time-delay neural network is used to determine the traffic status through traffic lanes. The acquired frames are divided into a number of blocks based on number of lanes and road boundary coordinates, which are obtained automatically by a part of the system called the road boundary detection system. Two extracted principal features from each block of a lane which are vehicle detector and movement detector will form the input vector of the neural network. The neural network classifies each lane into a level of traffic congestion. The neural network was previously trained with various traffic and different lighting conditions. Finally a description of traffic scene is obtained using descriptions of all lanes.
基于图像处理和延时神经网络的定性流量分析
我们提出了一种基于特征的在线方法,从一系列交通图像中估计交通定性参数。考虑到时间因素,并试图模拟人的行为,采用时滞神经网络来确定通过交通车道的交通状态。采集到的帧根据车道数和道路边界坐标划分为若干块,由系统的一部分道路边界检测系统自动获取。从每个车道块中提取两个主要特征,即车辆检测器和运动检测器,作为神经网络的输入向量。神经网络将每条车道按交通拥堵程度进行分类。神经网络之前是在不同的交通和不同的照明条件下训练的。最后利用所有车道的描述得到交通场景的描述。
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