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广义核或混合核FLICM畜肉图像分割方法
引用本文:吴一全,曹鹏祥,王凯,朱丽.广义核或混合核FLICM畜肉图像分割方法[J].现代食品科技,2015,31(7):130-136.
作者姓名:吴一全  曹鹏祥  王凯  朱丽
作者单位:(1.南京航空航天大学 电子信息工程学院,江苏南京 210016)(2.江南大学食品科学与技术国家重点实验室,江苏无锡 214122)(3.江苏省食品先进制造装备技术重点实验室,江苏无锡 214122),(1.南京航空航天大学 电子信息工程学院,江苏南京 210016)(4.中国人民解放军93173部队,辽宁大连 116300),(1.南京航空航天大学 电子信息工程学院,江苏南京 210016),(1.南京航空航天大学 电子信息工程学院,江苏南京 210016)
基金项目:国家自然科学基金资助项目(60872065);江南大学食品科学与技术国家重点实验室开放基金项目(SKLF-KF-201310);江苏省食品先进制造装备技术重点实验室开放课题资助项目(FM-201409);江苏高校优势学科建设工程资助项目(2012)
摘    要:针对传统核模糊C均值聚类(Kernel Fuzzy C-Means,KFCM)畜肉图像分割方法对噪声适应能力不强的问题,提出基于广义核函数或混合核函数的模糊局部信息C均值聚类(Fuzzy Local Information C-Means,FLICM)畜肉图像分割方法(KFLICM_UG方法和KFLICM_MG方法)。首先利用广义核函数或混合核函数可以有效兼顾学习能力和泛化能力的优势,将图像的每一个像素映射到高维的特征空间,扩大像素有用特征的类间差异,使像素在高维特征空间中拥有更优的线性可聚性;然后结合像素的局部空间和灰度信息,确定其模糊隶属度,在高维的特征空间中依据图像特征对像素进行模糊局部信息C均值聚类,最终实现畜肉图像的分割。大量的实验结果表明,相比现有的模糊C均值(Fuzzy C-Means,FCM)分割方法、KFCM分割方法和FLICM分割方法,本文提出的KFLICM_UG方法和KFLICM_MG方法可以获得更好的分割效果,更低的分割错误率,且具有更强的噪声适应能力和鲁棒性。

关 键 词:畜肉图像  图像分割  模糊C均值聚类  广义核函数  混合核函数  局部信息
收稿时间:2014/10/27 0:00:00

Meat Image Segmentation Using Fuzzy Local Information C-Means Clustering for Generalized or Mixed Kernel Function
WU Yi-quan,CAO Peng-xiang,WANG Kai and ZHU Li.Meat Image Segmentation Using Fuzzy Local Information C-Means Clustering for Generalized or Mixed Kernel Function[J].Modern Food Science & Technology,2015,31(7):130-136.
Authors:WU Yi-quan  CAO Peng-xiang  WANG Kai and ZHU Li
Affiliation:(1.College of Electronic and Information Engineering, Nanjing University of Aeronautics and Astronautics, Nanjing 210016, China) (2.State Key Laboratory of Food Science & Technology, Jiangnan University, Wuxi 214122, China) (3.Jiangsu Key Laboratory of Advanced Food Manufacturing Equipment & Technology, Wuxi 214122, China),(1.College of Electronic and Information Engineering, Nanjing University of Aeronautics and Astronautics, Nanjing 210016, China)(4.Unit 93173, Chinese People's Liberation Army, Dalian 116300, China),(1.College of Electronic and Information Engineering, Nanjing University of Aeronautics and Astronautics, Nanjing 210016, China) and (1.College of Electronic and Information Engineering, Nanjing University of Aeronautics and Astronautics, Nanjing 210016, China)
Abstract:Focusing on the lack of a strong adaptive ability to noise of the meat image segmentation method that is based on the traditional kernel fuzzy C-means (KFCM) clustering, two image segmentation methods (KFLICM_UG and KFLICM_MG) were applied to meat samples; these segmentation methods used fuzzy local information C-means clustering (FLICM), which is based on generalized or hybrid kernel function. Firstly, the generalized or hybrid kernel functions were used to strike a good balance between learning and generalization abilities. Each image pixel was mapped onto a high-dimensional feature space, which leads to a larger inter-class difference between the useful features of pixels. Thus, those pixels could be clustered more easily in the high-dimensional feature space. Then, the fuzzy membership of each pixel was determined based on the combination of its local space information with grayscale information. Finally, meat image segmentation was completed via the fuzzy local information C-means clustering according to the image features in the high-dimensional feature space. Considering results of previous studies, compared with the existing FCM (Fuzzy C-Means) segmentation methods such as KFCM and FLICM segmentation methods, the proposed method (KFLICM_UG, KFLICM_MG) can achieve better segmentation results with lower segmentation error rate, stronger adaptiveness, and robustness against noise.
Keywords:meat image  image segmentation  fuzzy C-means clustering  generalized kernel function  mixed kernel function  local information
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