Reinforcement Learning-Based Adversarial Attacks for Robust and Interpretable Classification of Images, Videos, and ECG Signals
A generic Reinforcement Learning (RL) framework that can efficiently generate adversarial attacks on various model types, from 1D ECG signal analysis to 2D image and 3D video classification, while providing visual explanations and improving model robustness through adversarial training.