论文标题
使用ANSCOMBE变换和Noisier2Noise模型对光学相干断层扫描图像的脱螺旋图
De-speckling of Optical Coherence Tomography Images Using Anscombe Transform and a Noisier2noise Model
论文作者
论文摘要
光学相干断层扫描(OCT)图像denoisising是一个基本问题,因为OCT图像遭受了乘法性噪声的影响,导致视网膜层的可见性不佳。传统的剥离方法考虑噪声的特定统计特性,这些特性并不总是知道。此外,最近基于深度学习的denoising方法需要配对的嘈杂和干净的图像,这些图像通常很难获得,尤其是医学图像。通常提出Noise2noise家庭架构来克服这个问题,而没有嘈杂的图像对。但是,为此,通常需要进行多个来自单个图像的嘈杂观察。同样,有时通过模拟清洁合成图像的声音来证明实验,这不是现实的情况。这项工作表明了如何使用对每个图像的单一现实嘈杂观察来训练一个denoising网络。除了理论上的理解外,我们的算法是使用公开可用的OCT图像数据集对实验验证的。我们的方法结合了ANSCombe变换,以将乘法噪声模型转换为加性高斯噪声,以使其适合OCT图像。定量结果表明,此方法可以胜过几种其他方法,即需要对图像进行单个嘈杂的观察。本文的代码和实施将在接受本文后公开提供。
Optical Coherence Tomography (OCT) image denoising is a fundamental problem as OCT images suffer from multiplicative speckle noise, resulting in poor visibility of retinal layers. The traditional denoising methods consider specific statistical properties of the noise, which are not always known. Furthermore, recent deep learning-based denoising methods require paired noisy and clean images, which are often difficult to obtain, especially medical images. Noise2Noise family architectures are generally proposed to overcome this issue by learning without noisy-clean image pairs. However, for that, multiple noisy observations from a single image are typically needed. Also, sometimes the experiments are demonstrated by simulating noises on clean synthetic images, which is not a realistic scenario. This work shows how a single real-world noisy observation of each image can be used to train a denoising network. Along with a theoretical understanding, our algorithm is experimentally validated using a publicly available OCT image dataset. Our approach incorporates Anscombe transform to convert the multiplicative noise model to additive Gaussian noise to make it suitable for OCT images. The quantitative results show that this method can outperform several other methods where a single noisy observation of an image is needed for denoising. The code and implementation of this paper will be available publicly upon acceptance of this paper.