论文标题
迈向对抗性强大的深层图像denoising
Towards Adversarially Robust Deep Image Denoising
论文作者
论文摘要
这项工作系统地研究了深度图像Deoisers(DIDS)的对抗性鲁棒性,即DIDS如何从对抗性扰动降解的嘈杂观察中恢复地面真理。首先,为了评估DIDS的鲁棒性,我们提出了一种新颖的对抗性攻击,即基于观察的零均值攻击({\ sc obsatk}),以在给定的嘈杂图像上制作对抗性零均值的扰动。我们发现现有DID容易受到{\ sc obsatk}产生的对抗噪声的影响。其次,为了鲁棒性,我们提出了一种对抗性训练策略,混合对抗训练({\ sc hat}),该训练与对抗性和非对抗性的噪声数据共同培训DIDS,以确保重建质量高,并且在非逆日数据周围的DeNoiser较高。最终的DID可以有效地消除各种类型的合成和对抗噪声。我们还发现,DIDS的鲁棒性使他们在看不见的现实世界噪声上的概括能力受益。的确,即使没有对真实的噪声数据进行训练,{\ s hat}训练的涂料也可以从现实世界噪声中恢复高质量的干净图像。在包括Set68,Polyu和Sidd在内的基准数据集上进行了广泛的实验,证实了{\ sc obsatk}和{\ sc hat}的有效性。
This work systematically investigates the adversarial robustness of deep image denoisers (DIDs), i.e, how well DIDs can recover the ground truth from noisy observations degraded by adversarial perturbations. Firstly, to evaluate DIDs' robustness, we propose a novel adversarial attack, namely Observation-based Zero-mean Attack ({\sc ObsAtk}), to craft adversarial zero-mean perturbations on given noisy images. We find that existing DIDs are vulnerable to the adversarial noise generated by {\sc ObsAtk}. Secondly, to robustify DIDs, we propose an adversarial training strategy, hybrid adversarial training ({\sc HAT}), that jointly trains DIDs with adversarial and non-adversarial noisy data to ensure that the reconstruction quality is high and the denoisers around non-adversarial data are locally smooth. The resultant DIDs can effectively remove various types of synthetic and adversarial noise. We also uncover that the robustness of DIDs benefits their generalization capability on unseen real-world noise. Indeed, {\sc HAT}-trained DIDs can recover high-quality clean images from real-world noise even without training on real noisy data. Extensive experiments on benchmark datasets, including Set68, PolyU, and SIDD, corroborate the effectiveness of {\sc ObsAtk} and {\sc HAT}.