论文标题
改善显微镜的盲点denoing
Improving Blind Spot Denoising for Microscopy
论文作者
论文摘要
许多显微镜应用受到可用光的总量的限制,因此受到获得图像中的噪声水平的挑战。这个问题通常是通过(有监督的)基于深度学习的denoising解决的。最近,通过对噪声统计数据进行假设,出现了自我监督的方法。此类方法直接在要剥落的图像上训练,并且不需要其他配对培训数据。尽管取得了显着的结果,但与监督方法相比,自我监管的方法可以产生高频伪像,并取得较低的结果。在这里,我们提供了一种新颖的方式来提高自我监督的denoisising质量。考虑到光学显微镜图像通常是衍射限制的,我们建议将这些知识包括在剥离过程中。我们假设干净的图像是具有点扩散函数(PSF)的卷积的结果,并在我们的神经网络末尾明确包含此操作。结果,我们能够消除高频文物并实现自我监督的结果,这些结果与传统监督方法非常接近。
Many microscopy applications are limited by the total amount of usable light and are consequently challenged by the resulting levels of noise in the acquired images. This problem is often addressed via (supervised) deep learning based denoising. Recently, by making assumptions about the noise statistics, self-supervised methods have emerged. Such methods are trained directly on the images that are to be denoised and do not require additional paired training data. While achieving remarkable results, self-supervised methods can produce high-frequency artifacts and achieve inferior results compared to supervised approaches. Here we present a novel way to improve the quality of self-supervised denoising. Considering that light microscopy images are usually diffraction-limited, we propose to include this knowledge in the denoising process. We assume the clean image to be the result of a convolution with a point spread function (PSF) and explicitly include this operation at the end of our neural network. As a consequence, we are able to eliminate high-frequency artifacts and achieve self-supervised results that are very close to the ones achieved with traditional supervised methods.