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Image classification method based on improved deep residual networks

机译:基于改进的深度残差网络的图像分类方法

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In order to solve the problem of image classification, a novel image classification method based on Residual Networks(ResNet) is proposed. Firstly, the 7*7 convolutional layer of the first layer of the network is replaced by a consequent three layer 3*3 convolutional layer, which reduces the number of model parameters without changing the receptive field. Secondly, the pooling layer of the network and the fully connected layer are replaced by the global average pooling layer, makes the model easier to train. Thirdly, the RelU function replaced by the better activation function Leaky ReLU. Finally, the model is verified by using crop disease images, and the experimental results show that the improved algorithm proposed in this study can effectively solve the problem of overfitting, and the classification of crop disease images reaches more than 98.3%, which is 1% higher than that of the original network.
机译:为了解决图像分类问题,提出了一种基于残差网络(ResNet)的图像分类新方法。首先,网络的第一层的7 * 7卷积层被随后的三层3 * 3卷积层代替,这减少了模型参数的数量,而没有改变接收场。其次,将网络的池化层和完全连接的层替换为全局平均池化层,使模型更易于训练。第三,RelU功能被更好的激活功能Leaky ReLU取代。最后,利用作物病害图像对模型进行了验证,实验结果表明,本文提出的改进算法可以有效解决过拟合问题,作物病害图像的分类率达到98.3%以上,为1%。高于原始网络的网络。

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