Single-Step Adversarial Training for Semantic Segmentation

D. Wiens, B. Hammer
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Abstract

Even though deep neural networks succeed on many different tasks including semantic segmentation, they lack on robustness against adversarial examples. To counteract this exploit, often adversarial training is used. However, it is known that adversarial training with weak adversarial attacks (e.g. using the Fast Gradient Method) does not improve the robustness against stronger attacks. Recent research shows that it is possible to increase the robustness of such single-step methods by choosing an appropriate step size during the training. Finding such a step size, without increasing the computational effort of single-step adversarial training, is still an open challenge. In this work we address the computationally particularly demanding task of semantic segmentation and propose a new step size control algorithm that increases the robustness of single-step adversarial training. The proposed algorithm does not increase the computational effort of single-step adversarial training considerably and also simplifies training, because it is free of meta-parameter. We show that the robustness of our approach can compete with multi-step adversarial training on two popular benchmarks for semantic segmentation.
语义分割的单步对抗训练
尽管深度神经网络在许多不同的任务上都取得了成功,包括语义分割,但它们对对抗示例缺乏鲁棒性。为了对抗这种攻击,通常会使用对抗性训练。然而,众所周知,使用弱对抗性攻击的对抗性训练(例如使用快速梯度方法)并不能提高对更强攻击的鲁棒性。最近的研究表明,可以通过在训练过程中选择适当的步长来增加这种单步方法的鲁棒性。在不增加单步对抗训练的计算工作量的情况下,找到这样一个步长仍然是一个开放的挑战。在这项工作中,我们解决了计算上特别苛刻的语义分割任务,并提出了一种新的步长控制算法,增加了单步对抗训练的鲁棒性。由于该算法不含元参数,因此不会大大增加单步对抗训练的计算量,并且简化了训练。我们表明,我们的方法的鲁棒性可以在两个流行的语义分割基准上与多步骤对抗训练相竞争。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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