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成像流型辨识算法
引用本文:陈宇,许莉薇,江露,黄仲洋. 成像流型辨识算法[J]. 哈尔滨理工大学学报, 2014, 0(4): 111-116
作者姓名:陈宇  许莉薇  江露  黄仲洋
作者单位:东北林业大学信息与计算机工程学院,黑龙江哈尔滨150040
基金项目:国家948项目(2011-4-04);中央高校基本科研业务费专项资金(DL12CB02);黑龙江省教育厅科学技术研究项目(12513016);黑龙江省博士后基金(LBH-201273);黑龙江省自然科学基金(F201347);哈尔滨市科技创新人才专项资金(2013RFQXJ100).
摘    要:针对电容层析成像反问题流型识别较难的问题,提出了一种基于高斯混合模型的电容层析成像流型辩识算法.在阐述高斯混合模型和EM算法的基础上,结合Kmeans算法,通过训练得到各类流型所对应的高斯混合模型参数,构造分类器实现对五种流型的快速与精准的识别.实验结果表明,该算法与BP神经网络、SVM、决策树识别算法相比,辨识准确率高、识别速度快,为电容层析成像流型辨识算法的研究提供了一个新思路.

关 键 词:电容层析成像  高斯混合模型  参数估计

Electrical Capacitance Tomography Identification Algorithm Based on GMM Model
CHEN Yu,XU Li-wei,JIANG Lu,HUANG Zhong-yang. Electrical Capacitance Tomography Identification Algorithm Based on GMM Model[J]. Journal of Harbin University of Science and Technology, 2014, 0(4): 111-116
Authors:CHEN Yu  XU Li-wei  JIANG Lu  HUANG Zhong-yang
Affiliation:(School of Information and Computer Science, Northeast Forestry University, Harbin 150040, China)
Abstract:To solve the flow pattern identification difficulty in electrical capacitance tomography (ECT), a gaussian mixture model(GMM) flow pattern identification algorithm for electrical capacitance tomography system is presented. On the basis of Gaussian mixture model(GMM) and the principle of EM algorithm, the Kmeans algorithm should be united in wedlock. Then we get the parameter of gaussian mixture model(GMM) through training of electrical capacitance tomography flow pattern, establish a classifier of gaussian mixture model (GMM) to achieve the goal of faster identification of five flow patterns. The experimental result shows that the algorithm has higher identification accuracy than the algorithm of neural network and support vector machine and decision tree. The algorithm provides a new idea for the research on the electrical capacitance tomography identification algorithm.
Keywords:electrical capacitance tomography  Gaussian mixture model  EM
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