论文标题

部分可观测时空混沌系统的无模型预测

Robust Real-World Image Super-Resolution against Adversarial Attacks

论文作者

Yue, Jiutao, Li, Haofeng, Wei, Pengxu, Li, Guanbin, Lin, Liang

论文摘要

最近,深度神经网络(DNN)在现实世界图像超分辨率(SR)方面取得了重大成功。但是,具有准侵略噪声的对抗图像样本可能威胁到深度学习的SR模型。在本文中,我们为现实世界SR提出了一个强大的深度学习框架,该框架随机消除了输入图像或特征的频域中潜在的对抗噪声。理由是,在SR任务上,清洁图像或功能与频域中受攻击的图案不同。观察到现有的对抗攻击通常会在输入图像中增加高频噪声,我们引入了一个新型的随机频率掩模模块,该模块可以以随机方式阻止可能包含有害扰动的高频组件。由于频率掩盖不仅可能会破坏对抗性扰动,而且还会影响干净的图像中的尖锐细节,我们还会根据图像的频域进一步开发一个对抗性样品分类器,以确定是否应用了提出的掩码模块。基于上述想法,我们设计了一个新颖的现实世界图像SR框架,该框架结合了所提出的频率掩盖模块和所提出的对抗分类器与现有的超分辨率骨干网络。实验表明,我们提出的方法对对抗性攻击更加不敏感,并且比现有模型和防御剂更稳定。

Recently deep neural networks (DNNs) have achieved significant success in real-world image super-resolution (SR). However, adversarial image samples with quasi-imperceptible noises could threaten deep learning SR models. In this paper, we propose a robust deep learning framework for real-world SR that randomly erases potential adversarial noises in the frequency domain of input images or features. The rationale is that on the SR task clean images or features have a different pattern from the attacked ones in the frequency domain. Observing that existing adversarial attacks usually add high-frequency noises to input images, we introduce a novel random frequency mask module that blocks out high-frequency components possibly containing the harmful perturbations in a stochastic manner. Since the frequency masking may not only destroys the adversarial perturbations but also affects the sharp details in a clean image, we further develop an adversarial sample classifier based on the frequency domain of images to determine if applying the proposed mask module. Based on the above ideas, we devise a novel real-world image SR framework that combines the proposed frequency mask modules and the proposed adversarial classifier with an existing super-resolution backbone network. Experiments show that our proposed method is more insensitive to adversarial attacks and presents more stable SR results than existing models and defenses.

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