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Application of the Compound Model of BP Neural Networks and Wavelet Transform in Image definition Identification

机译:BP神经网络化合物模型的应用和小波变换在图像定义识别中的应用

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First, the background, significance and general implementation of the image definition identification are introduced. Then, basic theory of wavelet transform and neural network is expounded. An identification method of image definition based on the composite model of wavelet analysis and neural network is suggested. The two—dimensional discrete wavelet transformation is used to filter image signal and extract its brim character which is input into BP neural network for identification. 4 layers of BP neural network are constructed to perform image definition identification. The compound model is first trained by 90 images from the training set, and then is tested by 87 images from the testing set. The results show that this is a very effective identification method which can obtain a higher recognition rate.
机译:首先,介绍了图像定义识别的背景,意义和一般实现。然后,阐述了小波变换和神经网络的基本理论。建议了基于小波分析和神经网络复合模型的图像定义的识别方法。二维离散小波变换用于过滤图像信号并提取其输入到BP神经网络中的边缘字符以识别。 4层BP神经网络被构造成执行图像定义识别。复合模型首先从训练集中培训90个图像,然后通过测试集中的87个图像测试。结果表明,这是一种非常有效的识别方法,可以获得更高的识别率。

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