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基于模糊支持向量机和D-S证据理论的钨矿石初选方法
引用本文:胡发焕,刘国平,胡瑢华,董增文.基于模糊支持向量机和D-S证据理论的钨矿石初选方法[J].光子学报,2017,46(7).
作者姓名:胡发焕  刘国平  胡瑢华  董增文
作者单位:1. 南昌大学机电工程学院,南昌330031;江西理工大学机电工程学院,江西赣州341000;2. 南昌大学机电工程学院,南昌,330031
基金项目:国家自然科学基金(No.71361014)资助 The National Natural Science Foundation of China
摘    要:单一特征识别的钨矿石初选准确率低,稳定性差,本文提出结合模糊支持向量机和D-S证据理论相的多特征钨矿石识别方法.对矿石图像预处理后,分别提取矿石的颜色、灰度和纹理等3类视觉特征,对这3类视觉特征进行模糊分类得到各自的信任度,再以这3类信任度为独立证据,采用D-S证据理论对3类证据进行融合,并依据分类判决规则得到最终的识别结果.试验结果表明,通过D-S理论对模糊向量机证据的融合,钨矿石初选的正确识别率达到96%以上,其准确率和稳定性较单一特征均有大幅度提高,满足生产过程中初选工艺的要求.

关 键 词:机器视觉  图像处理  D-S证据理论  钨矿石  模糊支持向量机  决策级融合  钨矿石初选  特征提取

Ungsten Ore Primary Selection Based on Fuzzy Support Vector Machine and D-S Evidence Theory
HU Fa-huan,LIU Guo-ping,HU Rong-hua,DONG Zeng-wen.Ungsten Ore Primary Selection Based on Fuzzy Support Vector Machine and D-S Evidence Theory[J].Acta Photonica Sinica,2017,46(7).
Authors:HU Fa-huan  LIU Guo-ping  HU Rong-hua  DONG Zeng-wen
Abstract:According to the low accuracy and low stability of the single feature-based method for tungsten ore primary selection,a multi-feature fusion based on fuzzy support vector machine and D-S evidence theory was proposed.Firstly,the three types of vision feature that is color,gray and texture were extracted from the ore image after a series of image processing.Their probability function were acquired according to each type of feature utilizing fuzzy support vector machine and the results were used to D-S evidence theory as evidence.Finally,using D-S combination rule of evidence to achieve the decision fusion and giving final recognition result by classification rules.The experimental results show that the accuracy of multi-feature fusion methods is over 96% and it has good performance on accuracy and stability compared to the single feature-based method in tungsten ore primary selection.The accuracy and stability can meet the requirement of production process.
Keywords:Machine vision  Image processing  D-S evidence theory  Tungsten ore  Fuzzy support vector machine  Decision fusion  Tungsten ore primary selection  Feature extraction
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