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A NN Image Classification Method Driven by the Mixed Fitness Function

机译:混合适应度函数驱动的神经网络图像分类方法

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The mixed fitness function of the error sum squares linear transformation is proposed in the article, and this function can improve the evaluation method of the individual fitness, and combining with NN, this method can be used in the high-speed paper money image analysis system. Aiming at many characters such as the high comparability of paper money images of different denominations, small class distance and large in-class discreteness induced by the using abrasion, this method first codes the weight values and threshold values of NN with real values, and transforms the problem from the representation type to the genotype, and performs many genetic operations such as selecting, crossing and variation, and takes the weight value and threshold value trained by the genetic algorithm according to the individual fitness value of the mixed fitness function as the initial weight value and initial threshold value of NN in the next stage, and trains these values by NN to establish the sorter. This method was tested in the embedded system with resource restriction (TI TMS320C6713 DSP), and 20000 RMB images were acquired as the samples, and 12000 images of them were tested, and the test result indicated that the method combining improved genetic algorithm with NN obviously enhanced the recognition rate.
机译:提出了误差和平方线性变换的混合适应度函数,该函数可以改进个体适应度的评价方法,并与神经网络相结合,可以用于高速纸币图像分析系统。 。针对不同面额的纸币图像具有较高的可比性,因使用磨擦引起的分类距离小,分类不连续性大等特点,该方法首先用实数值对NN的权重值和阈值进行编码,然后进行变换。从表示类型到基因型的问题,并执行许多遗传操作,例如选择,杂交和变异,并根据混合适应度函数的个体适应度值将遗传算法训练的权重值和阈值作为初始值权重值和下一阶段的初始阈值,然后由NN训练这些值以建立分类器。该方法在具有资源限制的嵌入式系统(TI TMS320C6713 DSP)中进行了测试,获得了20000元图像作为样本,并对其进行了12000张图像测试,测试结果表明该方法将改进的遗传算法与NN相结合。提高识别率。

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