Name:
SparseFool
Description:
Geometry-inspired sparse attack on deep networks
Professor — Lab:
Pascal FrossardSignal Processing Laboratory

Technical description:
Deep Neural Networks have achieved extraordinary results on image classification tasks, but have been shown to be vulnerable to attacks with carefully crafted perturbations of the input data. Although most attacks usually change values of many image’s pixels, it has been shown that deep networks are also vulnerable to sparse alterations of the input. SparseFool implements an efficient algorithm to compute and control sparse alterations.
Papers:
Project status:
inactive — entered showcase: 2019-09-04 — entry updated: 2024-03-21

Source code:
Lab GitHub - last commit: 2020-09-27
Code quality:
This project has not yet been evaluated by the C4DT Factory team. We will be happy to evaluate it upon request.
Project type:
Application
Programming language:
Python
License:
Apache-2.0