Hendriks C L Luengo, Knowles D W
J Microsc. 2007 Jan;225(Pt 1):104-7; author reply 108. doi: 10.1111/j.1365-2818.2007.01733.x.
Moss et al. (2005) describe, in a recent paper, a filter that they use to detect lines. We noticed that the wavelet on which this filter is based is a difference of uniform filters. This filter is an approximation to the second-derivative operator, which is commonly implemented as the Laplace of Gaussian (or Marr-Hildreth) operator. We have compared Moss' filter with (1) the Laplace of Gaussian operator, (2) an approximation of the Laplace of Gaussian using uniform filters and (3) a few common noise reduction filters. The Laplace-like operators detect lines by suppressing image features both larger and smaller than the filter size. The noise reduction filters only suppress image features smaller than the filter size. By estimating the signal-to-noise ratio and mean square difference of the filtered results, we found that the filter proposed by Moss et al. does not outperform the Laplace of Gaussian operator. We also found that for images with extreme noise content, line detection filters perform better than the noise reduction filters when trying to enhance line structures. In less extreme cases of noise, the standard noise reduction filters perform significantly better than both the Laplace of Gaussian and Moss' filter.
莫斯等人(2005年)在最近的一篇论文中描述了一种他们用于检测线条的滤波器。我们注意到该滤波器所基于的小波是均匀滤波器的差值。此滤波器是二阶导数算子的一种近似,二阶导数算子通常实现为高斯-拉普拉斯(或马尔-希尔德雷思)算子。我们已将莫斯的滤波器与以下几种滤波器进行了比较:(1)高斯-拉普拉斯算子;(2)使用均匀滤波器对高斯-拉普拉斯的一种近似;(3)一些常见的降噪滤波器。类拉普拉斯算子通过抑制比滤波器尺寸大或小的图像特征来检测线条。降噪滤波器仅抑制比滤波器尺寸小的图像特征。通过估计滤波结果的信噪比和均方差,我们发现莫斯等人提出的滤波器并不优于高斯-拉普拉斯算子。我们还发现,对于噪声含量极高的图像,在试图增强线条结构时,线条检测滤波器比降噪滤波器表现更好。在噪声不太极端的情况下,标准降噪滤波器的性能明显优于高斯-拉普拉斯算子和莫斯的滤波器。