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The Design of Composite Adaptive Morphological Filter and Applications to Rician Noise Reduction in MR Images

机译:复合自适应形态滤波器的设计及其在MR图像Rician降噪中的应用

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Composite filters based on morphological operators are getting considerably attractive to medical image denoising. Most of such composite filters depend on classical morphological operators. In this article, an optimal composite adaptive morphological filter (F_(CAMF)) is developed through a genetic programming (GP) training algorithm by using new nonlocal amoeba morphological operators. On one hand, we propose a novel method for formulating and implementing nonlocal amoeba structuring elements (SEs) for input-adaptive morphological operators. The nonlocal amoeba SEs in the proposed strategy is divided into two parts: one is the patch distance based amoeba center, and another is the geodesic distance based amoeba boundary, by which the nonlocal patch distance and local geodesic distance are both taken into consideration. On the other hand, GP as a supervised learning algorithm is employed for building the F_(CAMF) In GP module, F_(CAMF) is evolved through evaluating the fitness of several individuals over certain number of generations. The proposed method does not need any prior information about the Rician noise variance. Experimental results on both standard simulated and real MRI data sets show that the proposed filter produces excellent results and outperforms existing state-of-the-art filters, especially for highly noisy image.
机译:基于形态学算子的复合滤波器对于医学图像降噪越来越有吸引力。大多数这样的复合滤波器取决于经典的形态学算子。在本文中,通过使用新的非局部变形虫形态运算符,通过遗传编程(GP)训练算法,开发了一种最佳的复合自适应形态滤波器(F_(CAMF))。一方面,我们提出了一种新的方法,用于为输入自适应形态算子制定和实现非局部变形虫结构元素(SE)。提出的策略中的非局部变形虫SEs分为两部分:一是基于斑块距离的变形虫中心,另一是基于测地距离的变形虫边界,考虑了非局部斑块距离和局部测地距离。另一方面,GP是一种监督学习算法,用于构建F_(CAMF)。在GP模块中,F_(CAMF)是通过评估多个个体在一定数量的世代中的适应度而进化的。所提出的方法不需要关于Rician噪声方差的任何先验信息。在标准模拟和真实MRI数据集上的实验结果表明,所提出的滤镜产生了出色的结果,并且优于现有的最新滤镜,尤其是对于高噪声图像。

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