Nie Yao, Barner Kenneth E
Department of Electrical and Computer Engineering, University of Delaware, Newark, DE 19716, USA.
IEEE Trans Image Process. 2006 Dec;15(12):3636-54. doi: 10.1109/tip.2006.882026.
The rank information of samples is widely utilized in nonlinear signal processing algorithms. Recently developed fuzzy transformation theory introduces the concept of fuzzy ranks, which incorporates sample spread (or sample diversity) information into the sample ranking framework. Thus, the fuzzy rank reflects a sample's rank, as well as its similarity to the other sample (namely, joint rank order and spread), and can be utilized to improve the performance of the conventional rank-order-based filters. In this paper, the well-known lower-upper-middle (LUM) filters are generalized utilizing the fuzzy ranks, yielding the class of fuzzy rank LUM (F-LUM) filters. Statistical and deterministic properties of the F-LUM filters are derived, showing that the F-LUM smoothers have similar impulsive noise removal capability to the LUM smoothers, while preserving the image details better. The F-LUM sharpeners are capable of enhancing strong edges while simultaneously preserving small variations. The performance of the F-LUM filters are evaluated for the problems of image impulsive noise removal, sharpening and edge-detection preprocessing. The experimental results show that the F-LUM smoothers can achieve a better tradeoff between noise removal and detail preservation than the LUM smoothers. The F-LUM sharpeners are capable of sharpening the image edges without amplifying the noise or distorting the fine details. The joint smoothing and sharpening operation of the general F-LUM filters also showed superiority in edge detection preprocessing application. In conclusion, the simplicity and versatility of the F-LUM filters and their advantages over the conventional LUM filters are desirable in many practical applications. This also shows that utilizing fuzzy ranks in filter generalization is a promising methodology.
样本的秩信息在非线性信号处理算法中得到了广泛应用。最近发展起来的模糊变换理论引入了模糊秩的概念,该概念将样本散布(或样本多样性)信息纳入样本排序框架。因此,模糊秩反映了样本的秩以及它与其他样本的相似性(即联合秩序和散布),并且可用于提高传统基于秩序的滤波器的性能。在本文中,利用模糊秩对著名的下-上-中(LUM)滤波器进行了推广,得到了模糊秩LUM(F-LUM)滤波器类。推导了F-LUM滤波器的统计和确定性性质,表明F-LUM平滑器具有与LUM平滑器相似的脉冲噪声去除能力,同时能更好地保留图像细节。F-LUM锐化器能够增强强边缘,同时保留小的变化。针对图像脉冲噪声去除、锐化和边缘检测预处理问题,评估了F-LUM滤波器的性能。实验结果表明,F-LUM平滑器在噪声去除和细节保留之间能比LUM平滑器实现更好的权衡。F-LUM锐化器能够锐化图像边缘,而不会放大噪声或扭曲精细细节。一般F-LUM滤波器的联合平滑和锐化操作在边缘检测预处理应用中也显示出优越性。总之,F-LUM滤波器的简单性和通用性以及它们相对于传统LUM滤波器的优势在许多实际应用中是很理想的。这也表明在滤波器推广中利用模糊秩是一种很有前途的方法。