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Robust and non-robust features of MNIST dataset

Constructing the robust dataset according to the approach suggested by Ilyas et al.:

Ilyas, Andrew, et al. "Adversarial examples are not bugs, they are features." arXiv preprint arXiv:1905.02175 (2019).

I have extract robust/nonrobust features for all 60k samples in the training set. The original MNIST dataset can be found here.

Usage

Clone the repo and import load_feature.py. Call the corresponding functions.

Perturbations

Four types of perturbations:

  • Vertical lines
  • Horizontal lines
  • Gaissian noise
  • Removal

The last group is not modified.

samples

Group Id STD Training (CNN) Accuracy Robust Training Accuracy
1 0.829 0.968
2 0.549 0.967
3 0.808 0.969
4 0.727 0.950
5 0.977 0.972

Running STD training over reconstructed datasets:

Group Id Robust Dataset Accuracy Nonrobust Dataset Accuracy
1 0.792 0.856
2 0.822 0.434
3 0.908 0.865
4 0.876 0.657
5 0.960 0.954

Reconstruction

Original Reconstruction (Robust) Reconstruction (Nonrobust)