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Recognition of Degraded Traffic Sign Symbols Using PNN and Combined Blur and Affine Invariants

机译:使用PNN和模糊与仿射不变量组合的退化交通标志符号识别

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A fast version of probabilistic neural network model is proposed. The model incorporates the J-means algorithm to select the pattern layer centers and genetic algorithm to optimize the spread parameters of the probabilistic neural network, enhancing its performance. The proposed approach is applied to the recognition of degraded traffic signs with promising results. In order to cope with the degradations, the Combined Blur and Affine Invariants (CBAIs) are adopted to extract the features of traffic sign symbols without any restorations which usually need a great amount of computations. The simulation results indicate that the fast version of PNN optimized with GA is not only parsimonious but also has better generalization performance.
机译:提出了概率神经网络模型的快速版本。该模型结合了J-means算法选择模式层中心和遗传算法来优化概率神经网络的传播参数,从而提高了其性能。所提出的方法被用于识别具有令人满意的结果的退化的交通标志。为了应对这种退化,采用了模糊和仿射不变量组合(CBAI)来提取交通标志符号的特征,而无需进行任何还原,这通常需要大量的计算。仿真结果表明,用遗传算法优化的快速神经网络不仅具有简约性,而且具有更好的泛化性能。

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