Optical coherence tomography (OCT) is a prevalent non-invasive imaging method which provides high resolution volumetric visualization of retina. However, its inherent defect, the speckle noise, can seriously deteriorate the tissue visibility in OCT. Deep learning based approaches have been widely used for image restoration, but most of these require a noise-free reference image for supervision. In this study, we present a diffusion probabilistic model that is fully unsupervised to learn from noise instead of signal. A diffusion process is defined by adding a sequence of Gaussian noise to self-fused OCT b-scans. Then the reverse process of diffusion, modeled by a Markov chain, provides an adjustable level of denoising. Our experiment results demonstrate that our method can significantly improve the image quality with a simple working pipeline and a small amount of training data.
翻译:光学一致性断层摄影(OCT)是一种普遍的非侵入性成像方法,它提供视网膜的高分辨率体积可视化。然而,其固有的缺陷,即闪烁噪音,可能严重恶化OCT组织能见度。基于深层次学习的方法已被广泛用于图像恢复,但其中多数需要无噪音的参考图像来监督。在这个研究中,我们提出了一个扩散概率模型,完全不受监督地从噪音而不是信号中学习。一个扩散过程是通过在自爆的 OCT b-scan 中添加高萨噪音序列来定义的。然后,由Markov 链制成的反向扩散过程提供了可调整的分流水平。我们的实验结果表明,我们的方法可以用简单的工作管道和少量的培训数据大大改进图像质量。