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The code for ComDefend: An Efficient Image Compression Model to Defend Adversarial Examples (CVPR2019)

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jiaxiaojunQAQ/Comdefend

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Comdefend

The code for CVPR2019 (ComDefend: An Efficient Image Compression Model to Defend Adversarial Examples) paper The pure tensorflow of code is released in the link

Environmental configuration

tensorflow>=1.1
python3
canton(pip install canton)

Train

Torch: Train_comdefend_Torch.py
TF: Train_comdefend_TF.py

Description

clean_image: we select 7 clean images which are classified correctly by the classifier
attack_image: we select 7 adversarial images which are attacked by the FGSM method
defend_image: we use the Comdefend to deal with 7 adversarial images
chackpoints: the model parameters
com_imagenet_temp, temp_imagenet: the temporary files of the Comdefend
dev.csv: correspondence between images and labels
Resnet_imagenet.py: the classifier
compression_imagenet.py: the Comdefend for Imagenet
compression_mnist.py: the Comdefend for fashion_mnist

In addition

E-mail: jiaxiaojun@iie.ac.cn

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The code for ComDefend: An Efficient Image Compression Model to Defend Adversarial Examples (CVPR2019)

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