论文标题
重建图像denoing的噪声歧管
Reconstructing the Noise Manifold for Image Denoising
论文作者
论文摘要
深度卷积神经网络(CNN)已成功地用于许多低级视力问题,例如图像DeNoising。尽管有条件的图像生成技术导致了这项任务的大量改进,但在提供有条件的生成对抗网络(CGAN)[42]中,几乎没有努力以理解对对象独立于现实世界应用可靠的图像噪声的明确方法。由于自然场景中模式的复杂性,因此在目标空间中利用结构的任务是不稳定的,因此无法避免存在不自然的人工制品或过度平滑的图像区域。为了填补空白,在这项工作中,我们介绍了CGAN的想法,该cgan明确利用了图像噪声空间中的结构。通过直接学习图像噪声的低维流形,生成器仅促进了从嘈杂的图像中删除该歧管的信息。这个想法带来了许多优势,尽管它可以在任何Denoiser结束时附加以显着提高其性能。根据我们的实验,我们的模型基本上要优于现有的最先进的体系结构,从而产生了较小的过度平滑尺寸和更好细节的去饰图像。
Deep Convolutional Neural Networks (CNNs) have been successfully used in many low-level vision problems like image denoising. Although the conditional image generation techniques have led to large improvements in this task, there has been little effort in providing conditional generative adversarial networks (cGAN)[42] with an explicit way of understanding the image noise for object-independent denoising reliable for real-world applications. The task of leveraging structures in the target space is unstable due to the complexity of patterns in natural scenes, so the presence of unnatural artifacts or over-smoothed image areas cannot be avoided. To fill the gap, in this work we introduce the idea of a cGAN which explicitly leverages structure in the image noise space. By learning directly a low dimensional manifold of the image noise, the generator promotes the removal from the noisy image only that information which spans this manifold. This idea brings many advantages while it can be appended at the end of any denoiser to significantly improve its performance. Based on our experiments, our model substantially outperforms existing state-of-the-art architectures, resulting in denoised images with less oversmoothing and better detail.