In the last decades, unsupervised deep learning based methods have caught researchers attention, since in many real applications, such as medical imaging, collecting a great amount of training examples is not always feasible. Moreover, the construction of a good training set is time consuming and hard because the selected data have to be enough representative for the task. In this paper, we focus on the Deep Image Prior (DIP) framework and we propose to combine it with a space-variant Total Variation regularizer with an automatic estimation of the local regularization parameters. Differently from other existing approaches, we solve the arising minimization problem via the flexible Alternating Direction Method of Multipliers (ADMM). Furthermore, we provide a specific implementation also for the standard isotropic Total Variation. The promising performances of the proposed approach, in terms of PSNR and SSIM values, are addressed through several experiments on simulated as well as real natural and medical corrupted images.
翻译:在过去几十年里,未经监督的深层学习方法引起了研究人员的注意,因为在许多实际应用中,如医学成像,收集大量培训实例并不总是可行的;此外,建造一套良好的培训工具耗时费时费力,因为所选数据必须足以代表任务;在本文件中,我们把重点放在深图像前(DIP)框架上,我们提议将其与空间变化总量变化调节器结合起来,并自动估算当地规范参数。不同于其他现有方法,我们通过多种倍数的灵活互换方向方法(ADMM)解决新出现的最小化问题。此外,我们还为标准的异位总变化提供了具体的实施办法。就PSNR和SSIM值而言,拟议办法的有希望的绩效是通过模拟以及真实的自然和医学腐败图像的实验来解决的。