论文标题

Carla-Gear:用于系统评估视觉模型对抗性鲁棒性的数据集生成器

CARLA-GeAR: a Dataset Generator for a Systematic Evaluation of Adversarial Robustness of Vision Models

论文作者

Nesti, Federico, Rossolini, Giulio, D'Amico, Gianluca, Biondi, Alessandro, Buttazzo, Giorgio

论文摘要

对抗性示例代表了几个应用程序域中深层神经网络的严重威胁,并且已经产生了大量工作来调查它们并减轻其效果。然而,没有太多的工作专门针对专门设计的数据集来评估神经模型的对抗性鲁棒性。本文介绍了Carla-Gear,这是一种自动生成光真实合成数据集的工具,可用于系统评估神经模型对身体对抗斑块的对抗性鲁棒性,并比较不同对抗性防御/检测方法的性能。该工具是使用其Python API建立在Carla模拟器上的,并允许在自动驾驶的背景下生成有关几个视觉任务的数据集。生成的数据集中包含的对抗贴片连接到广告牌或卡车的背面,并通过使用最先进的白色盒子攻击策略来制定,以最大程度地提高测试模型的预测错误。最后,本文提出了一项实验研究,以评估某些防御方法针对此类攻击的性能,以表明如何将使用Carla-Gear产生的数据集用作现实世界中对抗性防御的基准。本文中使用的所有代码和数据集可在http://carlagear.retis.santannapisa.it上获得。

Adversarial examples represent a serious threat for deep neural networks in several application domains and a huge amount of work has been produced to investigate them and mitigate their effects. Nevertheless, no much work has been devoted to the generation of datasets specifically designed to evaluate the adversarial robustness of neural models. This paper presents CARLA-GeAR, a tool for the automatic generation of photo-realistic synthetic datasets that can be used for a systematic evaluation of the adversarial robustness of neural models against physical adversarial patches, as well as for comparing the performance of different adversarial defense/detection methods. The tool is built on the CARLA simulator, using its Python API, and allows the generation of datasets for several vision tasks in the context of autonomous driving. The adversarial patches included in the generated datasets are attached to billboards or the back of a truck and are crafted by using state-of-the-art white-box attack strategies to maximize the prediction error of the model under test. Finally, the paper presents an experimental study to evaluate the performance of some defense methods against such attacks, showing how the datasets generated with CARLA-GeAR might be used in future work as a benchmark for adversarial defense in the real world. All the code and datasets used in this paper are available at http://carlagear.retis.santannapisa.it.

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