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Parallel mining method for symbol application features of complex network images

机译:复杂网络图像符号应用功能的并行挖掘方法

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摘要

Aiming at the problems of poor denoising effect, low recognition rate and long feature mining time in current methods, a parallel feature mining method of image symbol application features in complex network based on neural network learning control is proposed. First, the standard deviation of image symbol noise is calculated and denoising is carried out by filtering parameters. Then the image symbol is segmented by using the two-dimensional maximum inter-group variance method. Finally, the momentum coefficient and learning efficiency are introduced to calculate the parameters of the neural network, and the improved simulated annealing algorithm is used to adjust the learning efficiency of the neural network, so as to realise the parallel mining of image symbol application features of the complex network. Experimental results show that this method has good image denoising effect, high image recognition rate and short feature mining time, which verifies the comprehensive effectiveness of this method.
机译:旨在瞄准较差的去噪效果,低识别率和当前方法的长特征采矿时间,提出了一种基于神经网络学习控制的复杂网络图像符号应用特征的并联特征挖掘方法。首先,计算图像符号噪声的标准偏差,通过过滤参数来执行去噪。然后通过使用二维最大帧间差异方法来分割图像符号。最后,引入了势头系数和学习效率来计算神经网络的参数,而改进的模拟退火算法用于调整神经网络的学习效率,以实现图像符号应用功能的并行开采复杂网络。实验结果表明,该方法具有良好的图像去噪效果,高图像识别率和短的特征采矿时间,验证了这种方法的综合效果。

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