Delving into adversarial attacks on deep policies

05/18/2017
by   Jernej Kos, et al.
0

Adversarial examples have been shown to exist for a variety of deep learning architectures. Deep reinforcement learning has shown promising results on training agent policies directly on raw inputs such as image pixels. In this paper we present a novel study into adversarial attacks on deep reinforcement learning polices. We compare the effectiveness of the attacks using adversarial examples vs. random noise. We present a novel method for reducing the number of times adversarial examples need to be injected for a successful attack, based on the value function. We further explore how re-training on random noise and FGSM perturbations affects the resilience against adversarial examples.

READ FULL TEXT

page 5

page 6

research
01/16/2017

Vulnerability of Deep Reinforcement Learning to Policy Induction Attacks

Deep learning classifiers are known to be inherently vulnerable to manip...
research
10/02/2017

Detecting Adversarial Attacks on Neural Network Policies with Visual Foresight

Deep reinforcement learning has shown promising results in learning cont...
research
06/01/2020

Adversarial Attacks on Reinforcement Learning based Energy Management Systems of Extended Range Electric Delivery Vehicles

Adversarial examples are firstly investigated in the area of computer vi...
research
12/02/2021

Adversarial Robustness of Deep Reinforcement Learning based Dynamic Recommender Systems

Adversarial attacks, e.g., adversarial perturbations of the input and ad...
research
12/08/2017

CycleGAN: a Master of Steganography

CycleGAN is one of the latest successful approaches to learn a correspon...
research
06/04/2018

Mitigation of Policy Manipulation Attacks on Deep Q-Networks with Parameter-Space Noise

Recent developments have established the vulnerability of deep reinforce...
research
07/23/2020

Scalable Inference of Symbolic Adversarial Examples

We present a novel method for generating symbolic adversarial examples: ...

Please sign up or login with your details

Forgot password? Click here to reset