基于GoogLeNet和残差神经网络ResNet的改进模型

Pub Date : 2022-01-01 DOI:10.4018/ijcini.313442
Xuehua Huang
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引用次数: 1

摘要

为了提高图像分类的精度,提出了一种改进模型。在GoogLeNet inception v1中增加了快捷方式,并给出了其他几种快捷方式,分别是GRSN1_2、GRSN1_3、GRSN1_4。其中,输入层的信息以快捷方式直接输出到后续各层。新的改进模型具有网络中同层的多尺寸和小卷积核的优点,并且具有减少信息损失的捷径的优点。同时,随着初始块数量的增加,通道数量也在增加,以加深信息的提取。在cifar10、cifar100和mnist数据集上比较了GRSN、GRSN1_2、GRSN1_3、GRSN1_4、GoogLeNet和ResNet模型。实验结果表明,该模型在数据集cifar10上比ResNet提高了3.07%,在数据集cifar100上比GoogLeNet提高了2.08%,在数据集cifar10上比GoogLeNet提高了17.69%,在数据集cifar100上比GoogLeNet提高了28.47%。
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Improved Model Based on GoogLeNet and Residual Neural Network ResNet
To improve the accuracy of image classification, a kind of improved model is proposed. The shortcut is added to GoogLeNet inception v1 and several other ways of shortcut are given, and they are GRSN1_2, GRSN1_3, GRSN1_4. Among them, the information of the input layer is directly output to each subsequent layer in the form of shortcut. The new improved model has the advantages of multi-size and small convolution kernel in the same layer in the network and the advantages of shortcut to reduce information loss. Meanwhile, as the number of inception blocks increases, the number of channels is increased to deepen the extraction of information. The GRSN, GRSN1_2, GRSN1_3, GRSN1_4, GoogLeNet, and ResNet models were compared on cifar10, cifar100, and mnist datasets. The experimental results show that the proposed model has 3.07% improved to ResNet on data set cifar10, 2.08% on data set cifar100, 17.69% improved to GoogLeNet on data set cifar10, 28.47% on data set cifar100.
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