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Adversarial Attacks on Object Detectors with Limited Perturbations

机译:对物体探测器的对抗攻击扰动有限

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Deep convolutional neural networks are widely witnessed vulnerable to adversarial attacks. Recently, great progress has been achieved in attacking object detectors. However, current attacks neglect the practical utility and rely on global perturbations on the target image with a large number of patches or pixels. In this paper, we present a novel attack framework named DTTACK to fool both one-stage and two-stage object detectors with limited perturbations. A novel divergent patch shape consisting of four intersecting lines is proposed to effectively affect deep convolutional feature extraction with limited pixels. In particular, we introduce an instance-aware heat map as a self-attention module to help DTTACK focus on salient object areas, which further improves the attacking performance. Extensive experiments on PASCAL-VOC, MS-COCO, as well as an online detection system demonstrate that DTTACK surpasses the state-of-the-art methods by large margins.
机译:深度卷积神经网络被广泛目睹易受对抗性攻击的影响。 最近,在攻击物体探测器方面取得了巨大进展。 然而,当前攻击忽略了实用的实用程序,并依赖于具有大量补丁或像素的目标图像上的全局扰动。 在本文中,我们提出了一个名为DTTack的新型攻击框架,以欺骗具有有限扰动的单级和两级对象探测器。 提出了一种由四条交叉线组成的新的发散贴片形状,以有效地影响有限像素的深卷积特征提取。 特别是,我们将一个实例感知热图介绍为自我关注模块,以帮助DTTACK专注于突出的对象区域,这进一步提高了攻击性能。 对Pascal-VOC,MS-Coco以及在线检测系统的广泛实验表明DTTACK通过大边缘超出最先进的方法。

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