论文标题
图像压缩感应的三重互补先验的力量
The Power of Triply Complementary Priors for Image Compressive Sensing
论文作者
论文摘要
使用深层模型的最新作品在各种图像恢复应用中取得了卓越的成果。通常对这种方法进行监督,这需要具有与要恢复的图像相似的分布的训练图像。另一方面,通常是无监督的浅方法在许多反问题中仍然有希望的表现,例如,图像压缩传感(CS),因为它们可以有效利用自然图像的非本地自然相似先验。但是,大多数此类方法是基于斑块的,导致恢复的图像由于幼稚的贴片聚集而具有各种响铃伪影。仅使用任何一种方法,通常会限制图像恢复任务中的性能和概括性。在本文中,我们提出了一个关节级别和深(LRD)图像模型,其中包含一对三环互补的先验,即\ textIt {extersext {external}和\ textit {internal},\ textit {deepit {deep} and \ textit {shallow},以及\ textit {shallow},and \ textit {local}和textIt and \ textit and} and-loc}然后,我们根据图像CS的LRD模型提出了一种新型混合插件(H-PNP)框架。为了使优化可进行,提出了一种简单而有效的算法来解决所提出的基于H-PNP的图像CS问题。广泛的实验结果表明,所提出的H-PNP算法显着超过了图像CS恢复(例如SCSNET和WNNM)的最新技术。
Recent works that utilized deep models have achieved superior results in various image restoration applications. Such approach is typically supervised which requires a corpus of training images with distribution similar to the images to be recovered. On the other hand, the shallow methods which are usually unsupervised remain promising performance in many inverse problems, \eg, image compressive sensing (CS), as they can effectively leverage non-local self-similarity priors of natural images. However, most of such methods are patch-based leading to the restored images with various ringing artifacts due to naive patch aggregation. Using either approach alone usually limits performance and generalizability in image restoration tasks. In this paper, we propose a joint low-rank and deep (LRD) image model, which contains a pair of triply complementary priors, namely \textit{external} and \textit{internal}, \textit{deep} and \textit{shallow}, and \textit{local} and \textit{non-local} priors. We then propose a novel hybrid plug-and-play (H-PnP) framework based on the LRD model for image CS. To make the optimization tractable, a simple yet effective algorithm is proposed to solve the proposed H-PnP based image CS problem. Extensive experimental results demonstrate that the proposed H-PnP algorithm significantly outperforms the state-of-the-art techniques for image CS recovery such as SCSNet and WNNM.