Home /Research /Boosting Adversarial Robustness using Feature Level Stochastic Smoothing
LEARNING

Boosting Adversarial Robustness using Feature Level Stochastic Smoothing

Sravanti Addepalli, Samyak Jain, Gaurang Sriramanan, R. Venkatesh Babu

Year
2021
Citations
4

Abstract

Advances in adversarial defenses have led to a significant improvement in the robustness of Deep Neural Networks. However, the robust accuracy of present state-of-the-art defenses is far from the requirements in critical applications such as robotics and autonomous navigation systems. Further, in practical use cases, network prediction alone might not suffice, and assignment of a confidence value for the prediction can prove crucial. In this work, we propose a generic method for introducing stochasticity in the network predictions, and utilize this for smoothing decision boundaries and rejecting low confidence predictions, thereby boosting the robustness on accepted samples. The proposed Feature Level Stochastic Smoothing based classification also results in a boost in robustness without rejection over existing adversarial training methods. Finally, we combine the proposed method with adversarial detection methods, to achieve the benefits of both approaches.

Keywords

Robustness (evolution)SmoothingAdversarial systemComputer scienceArtificial intelligenceBoosting (machine learning)Machine learningArtificial neural networkData miningComputer vision

Related papers

Browse all LEARNING papers