Instance-based defense against adversarial attacks in Deep Reinforcement Learning

Volume: 107, Pages: 104514 - 104514
Published: Jan 1, 2022
Abstract
Deep Reinforcement Learning systems are now a hot topic in Machine Learning for their effectiveness in many complex tasks, but their application in safety-critical domains (e.g., robot control or self-autonomous driving) remains dangerous without mechanism to detect and prevent risk situations. In Deep RL, such risk is mostly in the form of adversarial attacks, which introduce small perturbations to sensor inputs with the aim of changing the...
Paper Details
Title
Instance-based defense against adversarial attacks in Deep Reinforcement Learning
Published Date
Jan 1, 2022
Volume
107
Pages
104514 - 104514
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