资源算法CapsNet-Adversarial

CapsNet-Adversarial

2020-03-27 | |  35 |   0 |   0

CapsNet-Adversarial

I show that reconstruction error can be used to detect adversarial attacks against encoder-decoder network architectures. These attacks are carried out in a white-box scenario for the classification+encoder network (in this case a capsule network), and black-box for the decoder network. This method can detect ~70% of adversarial attacks at a 5% false positive rate. Check out Attack-CapsNet.ipynb for implementation details and results.

This project was done as part of my final project for CMPS 290C: Advanced Machine Learning at UC Santa Cruz. The associated talk can be found at Adversarial-Defenses-Talk


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