基于颜色标准化的交通标志识别智能方法

Zhu Shuangdong, Jiang Tian-tian
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引用次数: 3

摘要

目前,基于BP神经网络的室外交通标志识别问题,识别率一般在60% ~ 70%之间。通过对结果的分析,可以得出影响识别率的关键因素是颜色复杂性引起的颜色失真。本文根据简化复杂问题的思想,利用颜色信息和智能方法提出了一种新的解决方案。首先将复杂的颜色信息分解为5种标准颜色,然后利用BP神经网络进行分类。本文采用BP网络进行颜色标准化,选取23个归一化符号作为训练集,531个真实符号作为BP网络的测试集。这样可以达到100%的平均识别率。同时,从网络的结构参数和训练参数两方面验证了该方法对交通标志颜色失真的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligence approach of traffic sign recognition based on color standardization
Nowadays, for the BP neural network based outdoor traffic sign recognition problems, the recognition rate is generally between 60% and 70%. Based on the results analysis, one may come to a conclusion that the key factors affecting recognition rate are the color distortion caused by the color complexity. This paper present a new solution according to the idea of simplifying the complex problem, using color information and intelligent approach. The first step is to break the complex color information down to 5 kinds of standard color, and then employ BP neural network to classification. In this article BP network is used for color standardization, selecting 23 normalization signs as training set and 531 real signs as testing set for BP network. By doing so 100% average recognition rate is achieved. At the same time, it shows the better robustness of the proposed approach for the color distortion of traffic sign in terms of either the structure parameter or the training parameter of network.
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