Development of a fuzzy neural network color image vehicular detection. (FNNCIVD) system

L. Lan, A. Kuo
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引用次数: 6

Abstract

This paper develops the fuzzy neural network color image vehicular detection (FNNCIVD) system to detect multiple-lane traffic flows. A pseudo line detector with fourteen detection points is placed on the monitor to detect the two-lane traffic images. On each detection point, the differencing or R, G and B pixel values between the background image and instantaneous image are inputted in every one-tenth second into a four-layer fuzzy neural network trained by the backpropagation algorithm. Traffic scenes in the daytime and nighttime are both experimented. The experiment results show that the success rates for traffic counting in different lighting conditions can be as high as 90%, in the mean time, the success rates for vehicle classification can reach 100%.
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基于模糊神经网络的彩色图像车辆检测。(FNNCIVD)系统
本文开发了模糊神经网络彩色图像车辆检测(FNNCIVD)系统,用于多车道交通流检测。在监视器上放置一个具有14个检测点的伪线路检测器,用于检测双车道交通图像。在每个检测点上,每十分之一秒将背景图像与瞬时图像之间的R、G、B像素差值输入到反向传播算法训练的四层模糊神经网络中。日间和夜间的交通场景都是实验性的。实验结果表明,不同光照条件下的交通计数成功率可高达90%,同时车辆分类成功率可达100%。
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