IEEE Trans Image Process. 2017 Apr;26(4):1637-1649. doi: 10.1109/TIP.2017.2658941. Epub 2017 Jan 25.
A non-local means (NLM) filter is a weighted average of a large number of non-local pixels with various image intensity values. The NLM filters have been shown to have powerful denoising performance, excellent detail preservation by averaging many noisy pixels, and using appropriate values for the weights, respectively. The NLM weights between two different pixels are determined based on the similarities between two patches that surround these pixels and a smoothing parameter. Another important factor that influences the denoising performance is the self-weight values for the same pixel. The recently introduced local James-Stein type center pixel weight estimation method (LJS) outperforms other existing methods when determining the contribution of the center pixels in the NLM filter. However, the LJS method may result in excessively large self-weight estimates since no upper bound is assumed, and the method uses a relatively large local area for estimating the self-weights, which may lead to a strong bias. In this paper, we investigated these issues in the LJS method, and then propose a novel local self-weight estimation methods using direct bounds (LMM-DB) and reparametrization (LMM-RP) based on the Baranchik's minimax estimator. Both the LMM-DB and LMM-RP methods were evaluated using a wide range of natural images and a clinical MRI image together with the various levels of additive Gaussian noise. Our proposed parameter selection methods yielded an improved bias-variance trade-off, a higher peak signal-to-noise (PSNR) ratio, and fewer visual artifacts when compared with the results of the classical NLM and LJS methods. Our proposed methods also provide a heuristic way to select a suitable global smoothing parameters that can yield PSNR values that are close to the optimal values.
非局部均值(NLM)滤波器是对具有不同图像强度值的大量非局部像素进行加权平均的滤波器。NLM 滤波器具有强大的去噪性能,通过对许多噪声像素进行平均,可以很好地保留细节,同时使用适当的权重值。两个不同像素之间的 NLM 权重是基于这两个像素周围的两个斑块之间的相似性和一个平滑参数来确定的。另一个影响去噪性能的重要因素是同一像素的自权重值。最近提出的局部 James-Stein 型中心像素权重估计方法(LJS)在确定 NLM 滤波器中中心像素的贡献时,优于其他现有方法。然而,LJS 方法可能会导致过大的自权重估计,因为它没有假设上限,并且该方法使用相对较大的局部区域来估计自权重,这可能导致强烈的偏差。本文研究了 LJS 方法中的这些问题,然后提出了一种新的基于直接界的局部自权重估计方法(LMM-DB)和重参数化(LMM-RP),该方法基于 Baranchik 的极大极小估计器。使用广泛的自然图像和临床 MRI 图像以及各种级别的加性高斯噪声对 LMM-DB 和 LMM-RP 方法进行了评估。与经典 NLM 和 LJS 方法的结果相比,我们提出的参数选择方法提高了偏差方差折衷、更高的峰值信噪比(PSNR)值和更少的视觉伪影。我们提出的方法还提供了一种启发式方法来选择合适的全局平滑参数,从而获得接近最优值的 PSNR 值。