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柑桔溃疡病自动识别方法及其仿真研究
引用本文:张敏,ZHU Qing-sheng,杨方云,LIU Feng.柑桔溃疡病自动识别方法及其仿真研究[J].系统仿真学报,2008,20(8):2056-2059.
作者姓名:张敏  ZHU Qing-sheng  杨方云  LIU Feng
作者单位:1. 重庆大学计算机学院,重庆,400030
2. 中国农业科学院柑桔研究所,重庆,400700
基金项目:高等学校博士学科点专项科研项目,重庆市自然科学基金
摘    要:研究基于Boosting的柑桔溃疡病自动识别算法.提出了一种基于特征选择准则的Boosting 学习算法,采用对称交叉熵作为弱分类器的相似度评价.将弱分类器相似度与Boosting学习过程相结合学习出更优化的弱分类器,对溃疡病斑图象进行特征选取和学习,建立了自适应的病斑特征模型,最后利用该模型完成溃疡病自动识别.实验结果表明,这种算法避免了Boosting算法进行特征提取时的缺点,减少了选取结果中的冗余,尤其在进行高维特征选取时,能够提高特征选取速度,使选取的特征更具代表性.

关 键 词:特征选择  对称交叉熵  机器视觉  分类器

Automatic Citrus Canker Recognition Method and Simulation
ZHANG Min,ZHU Qing-sheng,YANG Fang-yun,LIU Feng.Automatic Citrus Canker Recognition Method and Simulation[J].Journal of System Simulation,2008,20(8):2056-2059.
Authors:ZHANG Min  ZHU Qing-sheng  YANG Fang-yun  LIU Feng
Abstract:To automatically detect citrus canker lesion,a theoretically justified learning algorithm based on boosting was proposed. Symmetric cross entropy was used as the measure of similarity for weak classifiers. An optimal weak leaner was derived from AdaBoost algorithm. Using this learner,efficient features were selected and an adaptive citrus canker lesion model was constructed. A simulation system based on the model was tested and experiment results show that this method can overcome the disadvantage of boosting algorithm,solving the problem that there is redundancy in the selected features,especially in high-dimension feature selection.And the algorithm is proved to speed feature selection and get more efficient features.
Keywords:feature selection  symmetric cross entropy  machine vision  classifier
本文献已被 CNKI 维普 万方数据 等数据库收录!
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