Abstract

With the adversarial attack of convolutional neural networks (CNNs), we are able to generate adversarial patches to make an aircraft undetectable by object detectors instead of covering the aircraft with large camouflage nets. However, aircraft in remote sensing images (RSIs) have the problem of large variations in scale, which can easily cause size mismatches between an adversarial patch and an aircraft. A small adversarial patch has no attack effect on large aircraft, and a large adversarial patch will completely cover small aircraft so that it is impossible to judge whether the adversarial patch has an attack effect. Therefore, we propose the adversarial attack method Patch-Noobj for the problem of large-scale variation in aircraft in RSIs. Patch-Noobj adaptively scales the width and height of the adversarial patch according to the size of the attacked aircraft and generates a universal adversarial patch that can attack aircraft of different sizes. In the experiment, we use the YOLOv3 detector to verify the effectiveness of Patch-Noobj on multiple datasets. The experimental results demonstrate that our universal adversarial patches are well adapted to aircraft of different sizes on multiple datasets and effectively reduce the Average Precision (AP) of the YOLOv3 detector on the DOTA, NWPU VHR-10, and RSOD datasets by 48.2%, 23.9%, and 20.2%, respectively. Moreover, the universal adversarial patch generated on one dataset is also effective in attacking aircraft on the remaining two datasets, while the adversarial patch generated on YOLOv3 is also effective in attacking YOLOv5 and Faster R-CNN, which demonstrates the attack transferability of the adversarial patch.

Highlights

  • Among the objects in remote sensing images (RSIs), an aircraft is considered a typical civil and military object.It has a wide range of types and scale variations and has an important role in transportation, air surveillance, etc

  • We focus on attacking object detectors on RSIs, allowing the adversarial patches to replace the traditional large camouflage nets to disguise the aircraft

  • Based on large variations in object scale and attack strategy, we propose an adversarial attack method named as Patch-Noobj that generates a universal adversarial patch to make the aircraft vanish from the view of object detectors

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Summary

Introduction

Among the objects in RSIs, an aircraft is considered a typical civil and military object. It has a wide range of types and scale variations and has an important role in transportation, air surveillance, etc. Research on adversarial patch attacks in terms of object detectors is mainly conducted on natural images [12,13,14,15]. These attack methods usually generate a fixed-size adversarial patch to attack an object detector. In RSIs, the same category of objects of different types may have different

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