Robustness image classification method based on multi-model adversarial distillation
A classification method and robust technology, applied in the field of image classification based on deep neural network and robust image classification, can solve the problems of low generalization ability of classification model and complex model structure, and achieve comprehensive performance and model. The effect of improved accuracy
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[0031] The specific embodiments of the present invention will be further described below with reference to the accompanying drawings and taking CIFAR100 image data as an example.
[0032] refer to figure 2 , starting with complex model pre-training, the specific steps are as follows:
[0033] S1: Pre-trained complex model;
[0034]The complex model framework is Densenet-121, and the training data set is CIFAR100. The data set consists of 100 categories of 32×32 3-channel RGB color pictures, including 50,000 training sets and 10,000 test sets. Train to get the model T 1 .
[0035] S2: Generate adversarial training samples;
[0036] According to formula (1), the PGD method is adopted, the disturbance coefficient, the step size in each iteration and the number of iterations are set, and the training set in the same data set in step S1 is used to generate adversarial training samples.
[0037]
[0038] S3: Adversarial training of complex models;
[0039] Use the perturbe...
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