Xu Jun, Zhang Lei, Zhang David
IEEE Trans Image Process. 2018 Mar 2. doi: 10.1109/TIP.2018.2811546.
Most of existing image denoising methods learn image priors from either external data or the noisy image itself to remove noise. However, priors learned from external data may not be adaptive to the image to be denoised, while priors learned from the given noisy image may not be accurate due to the interference of corrupted noise. Meanwhile, the noise in real-world noisy images is very complex, which is hard to be described by simple distributions such as Gaussian distribution, making real-world noisy image denoising a very challenging problem. We propose to exploit the information in both external data and the given noisy image, and develop an external prior guided internal prior learning method for real-world noisy image denoising. We first learn external priors from an independent set of clean natural images. With the aid of learned external priors, we then learn internal priors from the given noisy image to refine the prior model. The external and internal priors are formulated as a set of orthogonal dictionaries to efficiently reconstruct the desired image. Extensive experiments are performed on several real-world noisy image datasets. The proposed method demonstrates highly competitive denoising performance, outperforming state-of-the-art denoising methods including those designed for real-world noisy images.
大多数现有的图像去噪方法通过从外部数据或噪声图像本身学习图像先验来去除噪声。然而,从外部数据学习的先验可能不适用于要去噪的图像,而从给定噪声图像学习的先验可能由于噪声干扰而不准确。同时,现实世界噪声图像中的噪声非常复杂,难以用高斯分布等简单分布来描述,这使得现实世界噪声图像去噪成为一个极具挑战性的问题。我们建议利用外部数据和给定噪声图像中的信息,并开发一种用于现实世界噪声图像去噪的外部先验引导内部先验学习方法。我们首先从一组独立的干净自然图像中学习外部先验。借助学习到的外部先验,我们然后从给定噪声图像中学习内部先验以优化先验模型。外部和内部先验被表述为一组正交字典,以有效地重建所需图像。我们在几个现实世界噪声图像数据集上进行了大量实验。所提出的方法展示出极具竞争力的去噪性能,优于包括那些针对现实世界噪声图像设计的最先进去噪方法。