IEEE Trans Image Process. 2013 Dec;22(12):5158-67. doi: 10.1109/TIP.2013.2282123. Epub 2013 Sep 16.
This paper addresses the noise estimation in the digital domain and proposes a noise estimator based on the step signal model. It is efficient for any distribution of noise because it does not rely only on the smallest amplitudes in the signal or image. The proposed approach uses polarized/directional derivatives and a nonlinear combination of these derivatives to estimate the noise distribution (e.g., Gaussian, Poisson, speckle, etc.). The moments of this measured distribution can be computed and are also calculated theoretically on the basis of noise distribution models. The 1D performances are detailed, and as this paper is mostly dedicated to image processing, a 2D extension is proposed. The 2D performances for several noise distributions and noise models are presented and are compared with selected other methods.
本文讨论了数字域中的噪声估计问题,并提出了一种基于阶跃信号模型的噪声估计器。由于它不仅依赖于信号或图像中的最小幅度,因此对于任何分布的噪声都非常有效。所提出的方法使用极化/方向导数以及这些导数的非线性组合来估计噪声分布(例如高斯分布、泊松分布、散斑等)。可以计算出该测量分布的矩,并且还可以根据噪声分布模型从理论上进行计算。详细介绍了一维性能,并且由于本文主要致力于图像处理,因此还提出了二维扩展。针对几种噪声分布和噪声模型介绍了二维性能,并与选定的其他方法进行了比较。