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Training method and apparatus for convolutional neural network model

机译:卷积神经网络模型的训练方法和装置

摘要

Disclosed are a training method and apparatus for a CNN model, which belong to the field of image recognition. The method comprises: performing a convolution operation, maximal pooling operation and horizontal pooling operation on training images, respectively, to obtain second feature images; determining feature vectors according to the second feature images; processing the feature vectors to obtain category probability vectors; according to the category probability vectors and an initial category, calculating a category error; based on the category error, adjusting model parameters; based on the adjusted model parameters, continuing the model parameters adjusting process, and using the model parameters when the number of iteration times reaches a pre-set number of times as the model parameters for the well-trained CNN model. After the convolution operation and maximal pooling operation on the training images on each level of convolution layer, a horizontal pooling operation is performed. Since the horizontal pooling operation can extract feature images identifying image horizontal direction features from the feature images, such that the well-trained CNN model can recognize an image of any size, thus expanding the applicable range of the well-trained CNN model in image recognition.
机译:CNN模型的训练方法和装置,属于图像识别领域。该方法包括:分别对训练图像进行卷积运算,最大池化运算和水平池化运算,以获得第二特征图像;根据第二特征图像确定特征矢量;处理特征向量以获得类别概率向量;根据类别概率向量和初始类别,计算类别误差;根据类别误差,调整模型参数;根据调整后的模型参数,继续进行模型参数调整过程,并在迭代次数达到预设次数时,使用模型参数作为训练有素的CNN模型的模型参数。在对卷积层的每个级别上的训练图像进行卷积操作和最大池化操作之后,执行水平池化操作。由于水平合并操作可以从特征图像中提取识别图像水平方向特征的特征图像,因此训练有素的CNN模型可以识别任何大小的图像,从而扩大了训练有素的CNN模型在图像识别中的适用范围。

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