论文标题
tog:针对实时对象检测系统的目标对抗对象梯度攻击
TOG: Targeted Adversarial Objectness Gradient Attacks on Real-time Object Detection Systems
论文作者
论文摘要
实时数据捕获的快速增长将深度学习和数据分析计算推向了边缘系统。边缘上的实时对象识别是用于现实世界中关键任务应用程序(例如自主驾驶和增强现实)的代表性深神经网络(DNN)供电的边缘系统之一。尽管DNN驱动的对象检测边缘系统庆祝许多富裕的机会,但它们也为滥用和滥用而打开了大门。本文介绍了三个目标对抗性梯度攻击,以tog的形式产生,这可能会导致最新的深层对象检测网络遭受对象范围,对象设置和对象无关的攻击。我们还提出了一种通用的对象梯度攻击,以对黑盒攻击使用对抗性可传递性,这对于具有可忽略不计的攻击时间成本,人类易感性低,尤其对对象检测边缘系统的任何输入有效。我们在两种最先进的检测算法(Yolo和SSD)上使用两个基准数据集(Pascal VOC和MS Coco)报告了我们的实验测量结果。结果表明,严重的对抗性脆弱性以及开发健壮对象检测系统的迫切需求。
The rapid growth of real-time huge data capturing has pushed the deep learning and data analytic computing to the edge systems. Real-time object recognition on the edge is one of the representative deep neural network (DNN) powered edge systems for real-world mission-critical applications, such as autonomous driving and augmented reality. While DNN powered object detection edge systems celebrate many life-enriching opportunities, they also open doors for misuse and abuse. This paper presents three Targeted adversarial Objectness Gradient attacks, coined as TOG, which can cause the state-of-the-art deep object detection networks to suffer from object-vanishing, object-fabrication, and object-mislabeling attacks. We also present a universal objectness gradient attack to use adversarial transferability for black-box attacks, which is effective on any inputs with negligible attack time cost, low human perceptibility, and particularly detrimental to object detection edge systems. We report our experimental measurements using two benchmark datasets (PASCAL VOC and MS COCO) on two state-of-the-art detection algorithms (YOLO and SSD). The results demonstrate serious adversarial vulnerabilities and the compelling need for developing robust object detection systems.