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Traffic Signs Detection and Recognition by Improved RBFNN

机译:改进RBFNN的交通标志检测与识别

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摘要

The paper develops radial basis function neural networks (RBFNN) applications in the traffic signs recognition.Firstly traffic signs are detected by using their color and shape informations.Then genetic algorithm (GA),which has a powerful global exploration capability,is applied to train RBFNN to obtain appropriate structures and parameters according to given objective functions.In order to improve recognition speed and accuracy,traffic signs are classified into three categories by special color and shape information.Three RBFNNs are designed for the three categories.Before fed into networks,the sign images are transformed into binary images and their features are optimized by linear discriminate analysis (LDA).The training set imitating possible sign transformations in real road conditions,is created to train and test the nets.The experimental results show the feasibility and validity of the proposed algorithm.
机译:本文开发了径向基函数神经网络(RBFNN)在交通标志识别中的应用,首先利用交通标志的颜色和形状信息对其进行检测,然后将具有强大全局探测能力的遗传算法(GA)应用于训练中。 RBFNN根据给定的目标函数获得合适的结构和参数。为了提高识别速度和准确性,交通标志通过特殊的颜色和形状信息分为三类。针对这三类设计了三个RBFNN。通过线性判别分析(LDA)将符号图像转换为二进制图像,并对其特征进行优化。创建了模拟实际路况下可能的符号转换的训练集,以训练和测试网络。实验结果表明了可行性和有效性提出的算法。

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