Department of Electrical Engineering, University of California, Santa Cruz, Santa Cruz, CA 95064, USA.
IEEE Trans Image Process. 2013 Apr;22(4):1470-85. doi: 10.1109/TIP.2012.2231691. Epub 2012 Dec 4.
Spatial domain image filters (e.g., bilateral filter, non-local means, locally adaptive regression kernel) have achieved great success in denoising. Their overall performance, however, has not generally surpassed the leading transform domain-based filters (such as BM3-D). One important reason is that spatial domain filters lack efficiency to adaptively fine tune their denoising strength; something that is relatively easy to do in transform domain method with shrinkage operators. In the pixel domain, the smoothing strength is usually controlled globally by, for example, tuning a regularization parameter. In this paper, we propose spatially adaptive iterative filtering (SAIF) is the Middle Eastern/Arabic name for sword. This acronym somehow seems appropriate for what the algorithm does by precisely tuning the value of the iteration number. a new strategy to control the denoising strength locally for any spatial domain method. This approach is capable of filtering local image content iteratively using the given base filter, and the type of iteration and the iteration number are automatically optimized with respect to estimated risk (i.e., mean-squared error). In exploiting the estimated local signal-to-noise-ratio, we also present a new risk estimator that is different from the often-employed SURE method, and exceeds its performance in many cases. Experiments illustrate that our strategy can significantly relax the base algorithm's sensitivity to its tuning (smoothing) parameters, and effectively boost the performance of several existing denoising filters to generate state-of-the-art results under both simulated and practical conditions.
空间域图像滤波器(例如双边滤波器、非局部均值滤波器、局部自适应回归核)在去噪方面取得了巨大成功。然而,它们的整体性能通常不如领先的变换域滤波器(如 BM3-D)。一个重要的原因是空间域滤波器缺乏自适应微调去噪强度的效率;而在变换域方法中,使用收缩算子相对容易做到这一点。在像素域中,平滑强度通常通过例如调整正则化参数来全局控制。在本文中,我们提出了一种新的策略,即空间自适应迭代滤波(SAIF),这是一种用于控制任何空间域方法的局部去噪强度的策略。该方法能够使用给定的基本滤波器迭代地过滤局部图像内容,并且迭代的类型和迭代次数可以根据估计的风险(即均方误差)自动优化。在利用估计的局部信噪比时,我们还提出了一种新的风险估计器,它与常用的 SURE 方法不同,在许多情况下超过了其性能。实验表明,我们的策略可以显著降低基本算法对其调整(平滑)参数的敏感性,并有效地提高几种现有去噪滤波器的性能,在模拟和实际条件下生成最新的结果。