Defending Adversarial Patches via Joint Region Localizing and Inpainting

07/26/2023
by   Junwen Chen, et al.
0

Deep neural networks are successfully used in various applications, but show their vulnerability to adversarial examples. With the development of adversarial patches, the feasibility of attacks in physical scenes increases, and the defenses against patch attacks are urgently needed. However, defending such adversarial patch attacks is still an unsolved problem. In this paper, we analyse the properties of adversarial patches, and find that: on the one hand, adversarial patches will lead to the appearance or contextual inconsistency in the target objects; on the other hand, the patch region will show abnormal changes on the high-level feature maps of the objects extracted by a backbone network. Considering the above two points, we propose a novel defense method based on a “localizing and inpainting" mechanism to pre-process the input examples. Specifically, we design an unified framework, where the “localizing" sub-network utilizes a two-branch structure to represent the above two aspects to accurately detect the adversarial patch region in the image. For the “inpainting" sub-network, it utilizes the surrounding contextual cues to recover the original content covered by the adversarial patch. The quality of inpainted images is also evaluated by measuring the appearance consistency and the effects of adversarial attacks. These two sub-networks are then jointly trained via an iterative optimization manner. In this way, the “localizing" and “inpainting" modules can interact closely with each other, and thus learn a better solution. A series of experiments versus traffic sign classification and detection tasks are conducted to defend against various adversarial patch attacks.

READ FULL TEXT

page 2

page 4

page 9

page 10

page 11

research
07/05/2022

PatchZero: Defending against Adversarial Patch Attacks by Detecting and Zeroing the Patch

Adversarial patch attacks mislead neural networks by injecting adversari...
research
08/10/2023

Adv-Inpainting: Generating Natural and Transferable Adversarial Patch via Attention-guided Feature Fusion

The rudimentary adversarial attacks utilize additive noise to attack fac...
research
08/06/2023

SAAM: Stealthy Adversarial Attack on Monoculor Depth Estimation

In this paper, we investigate the vulnerability of MDE to adversarial pa...
research
12/11/2019

BINet: a binary inpainting network for deep patch-based image compression

Recent deep learning models outperform standard lossy image compression ...
research
03/18/2023

Detection of Uncertainty in Exceedance of Threshold (DUET): An Adversarial Patch Localizer

Development of defenses against physical world attacks such as adversari...
research
05/21/2022

On the Feasibility and Generality of Patch-based Adversarial Attacks on Semantic Segmentation Problems

Deep neural networks were applied with success in a myriad of applicatio...
research
04/30/2021

IPatch: A Remote Adversarial Patch

Applications such as autonomous vehicles and medical screening use deep ...

Please sign up or login with your details

Forgot password? Click here to reset