论文标题

深度差异先验:没有清洁数据

Deep Variation Prior: Joint Image Denoising and Noise Variance Estimation without Clean Data

论文作者

Ke, Rihuan

论文摘要

通过最近基于深度学习的方法显示出令人鼓舞的结果来消除图像中的噪音,在有监督的学习设置中已经报道了最好的降级性能,该设置需要大量配对的嘈杂图像和训练的基础真相。强大的数据需求可以通过无监督的学习技术来减轻,但是,对于高质量的解决方案,对图像或噪声方差的准确建模仍然至关重要。对于未知的噪声分布而言,学习问题不足。本文研究了单个联合学习框架中图像降解和噪声方差估计的任务。为了解决问题的不良性,我们提出了深度差异先验(DVP),该差异指出,噪声变化的正确学习的DeNoiser的变化满足了一些平稳性的特性,这是良好DeNoiser的关键标准。在DVP的基础上是一个无监督的深度学习框架,同时学习了DeNoiser并估算了噪声差异。我们的方法不需要任何干净的训练图像或噪声估算的外部步骤,而仅使用一组嘈杂的图像近似于最小平方误差DeNoisers。在一个框架中考虑了两个基本任务,我们允许它们相互优化。实验结果表明,具有与监督的学习和准确的噪声方差估计值相当的质量。

With recent deep learning based approaches showing promising results in removing noise from images, the best denoising performance has been reported in a supervised learning setup that requires a large set of paired noisy images and ground truth for training. The strong data requirement can be mitigated by unsupervised learning techniques, however, accurate modelling of images or noise variance is still crucial for high-quality solutions. The learning problem is ill-posed for unknown noise distributions. This paper investigates the tasks of image denoising and noise variance estimation in a single, joint learning framework. To address the ill-posedness of the problem, we present deep variation prior (DVP), which states that the variation of a properly learnt denoiser with respect to the change of noise satisfies some smoothness properties, as a key criterion for good denoisers. Building upon DVP, an unsupervised deep learning framework, that simultaneously learns a denoiser and estimates noise variances, is developed. Our method does not require any clean training images or an external step of noise estimation, and instead, approximates the minimum mean squared error denoisers using only a set of noisy images. With the two underlying tasks being considered in a single framework, we allow them to be optimised for each other. The experimental results show a denoising quality comparable to that of supervised learning and accurate noise variance estimates.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源