Revisiting the Adversarial Robustness-Accuracy Tradeoff in Robot
Learning
- URL: http://arxiv.org/abs/2204.07373v1
- Date: Fri, 15 Apr 2022 08:12:15 GMT
- Title: Revisiting the Adversarial Robustness-Accuracy Tradeoff in Robot
Learning
- Authors: Mathias Lechner, Alexander Amini, Daniela Rus, Thomas A. Henzinger
- Abstract summary: Recent work has shown that, in practical robot learning applications, the effects of adversarial training do not pose a fair trade-off.
This work revisits the robustness-accuracy trade-off in robot learning by analyzing if recent advances in robust training methods and theory can make adversarial training suitable for real-world robot applications.
- Score: 121.9708998627352
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Adversarial training (i.e., training on adversarially perturbed input data)
is a well-studied method for making neural networks robust to potential
adversarial attacks during inference. However, the improved robustness does not
come for free but rather is accompanied by a decrease in overall model accuracy
and performance. Recent work has shown that, in practical robot learning
applications, the effects of adversarial training do not pose a fair trade-off
but inflict a net loss when measured in holistic robot performance. This work
revisits the robustness-accuracy trade-off in robot learning by systematically
analyzing if recent advances in robust training methods and theory in
conjunction with adversarial robot learning can make adversarial training
suitable for real-world robot applications. We evaluate a wide variety of robot
learning tasks ranging from autonomous driving in a high-fidelity environment
amenable to sim-to-real deployment, to mobile robot gesture recognition. Our
results demonstrate that, while these techniques make incremental improvements
on the trade-off on a relative scale, the negative side-effects caused by
adversarial training still outweigh the improvements by an order of magnitude.
We conclude that more substantial advances in robust learning methods are
necessary before they can benefit robot learning tasks in practice.
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