论文标题
基于相似性的无监督深度学习的抑制相关噪声
Suppression of Correlated Noise with Similarity-based Unsupervised Deep Learning
论文作者
论文摘要
图像DeNoising是许多领域下游任务的先决条件。低剂量和光子计算计算机断层扫描(CT)denoising可以在最小化的辐射剂量下优化诊断性能。有监督的深层降级方法很受欢迎,但需要配对的干净或嘈杂的样品,这些样品在实践中通常不可用。受独立噪声假设的限制,当前无监督的denoising方法无法像CT图像中的处理相关的噪声。在这里,我们提出了基于初始的相似性的无监督的深层denoising方法,称为Noise2sim,它以非本地和非线性方式起作用,不仅可以抑制独立,而且可以抑制噪声。从理论上讲,噪声2SIM在轻度条件下渐近地等同于监督学习方法。在实验上,Nosie2SIM从嘈杂的低剂量CT和光子计数CT图像中恢复了固有的特征,并且比在视觉上,定量和统计上的实用数据集上的监督学习方法有效甚至更好。 noings2sim是一种普遍的无监督的剥离方法,在不同的应用中具有巨大的潜力。
Image denoising is a prerequisite for downstream tasks in many fields. Low-dose and photon-counting computed tomography (CT) denoising can optimize diagnostic performance at minimized radiation dose. Supervised deep denoising methods are popular but require paired clean or noisy samples that are often unavailable in practice. Limited by the independent noise assumption, current unsupervised denoising methods cannot process correlated noises as in CT images. Here we propose the first-of-its-kind similarity-based unsupervised deep denoising approach, referred to as Noise2Sim, that works in a nonlocal and nonlinear fashion to suppress not only independent but also correlated noises. Theoretically, Noise2Sim is asymptotically equivalent to supervised learning methods under mild conditions. Experimentally, Nosie2Sim recovers intrinsic features from noisy low-dose CT and photon-counting CT images as effectively as or even better than supervised learning methods on practical datasets visually, quantitatively and statistically. Noise2Sim is a general unsupervised denoising approach and has great potential in diverse applications.