Department of Radiological Technology, Nagoya University School of Health Sciences, Higashi-ku, Nagoya, Japan.
Comput Med Imaging Graph. 2010 Dec;34(8):642-50. doi: 10.1016/j.compmedimag.2010.07.005. Epub 2010 Aug 24.
Rank et al. have proposed an algorithm for estimating image noise variance composed of the following three steps: the noisy image is first filtered by a difference operator; a histogram of local signal variances is then computed; and, finally the noise variance is estimated from a statistical evaluation of the histogram. We have verified the accuracy of this algorithm on a CT image by indirect methods, and have shown that this method is able to estimate CT image noise variance with reasonable accuracy, regardless of whether or not the noiseless image is uniform. Further, we have proposed a simple alternative method for the last two steps of the Rank et al. method. However, one must pay attention to the fact that the estimated noise variance will be biased when the nearest two pixels are correlated and that this algorithm does not work well if the assumption of stationarity of noise components is violated.
兰克等人提出了一种估计图像噪声方差的算法,该算法由以下三个步骤组成:首先用差分算子对噪声图像进行滤波;然后计算局部信号方差的直方图;最后通过对直方图进行统计评估来估计噪声方差。我们已经通过间接方法验证了该算法在 CT 图像上的准确性,结果表明,无论无噪声图像是否均匀,该方法都能够以合理的精度估计 CT 图像噪声方差。此外,我们还为 Rank 等人的方法的后两个步骤提出了一种简单的替代方法。但是,必须注意到,当最近的两个像素相关时,估计的噪声方差会存在偏差,如果噪声分量的平稳性假设被违反,那么该算法的效果也不会很好。