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机器视觉和AdaBoost的柑桔溃疡病自动检测
引用本文:朱庆生,张敏,杨方云,柳锋.机器视觉和AdaBoost的柑桔溃疡病自动检测[J].计算机仿真,2008,25(7).
作者姓名:朱庆生  张敏  杨方云  柳锋
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基金 , 重庆市自然科学基金资助
摘    要:将计算机视觉技术应用于柑桔病害识别问题,实现了快速准确的识别柑桔溃疡病.从特征构造,特征选择和识别系统设计三方面进行了研究.在特征构造上采用了Gabor变换,边缘识别等方法得到了包括颜色、纹理及形状的综合特征;在特征选择上采用了AdaBoost算法实现;最后通过AdaBoost学习方法构造分类器并利用滑动窗口技术进行病害区域检测.实验结果证明该方法对柑桔溃疡病其识别准确率高于95%,在训练轮数较多的情况下能够接近99%的识别率,且该识别率较稳定.实验结果显示计算机自动识别效果与专家目测相当,在生产中具有一定的实用价值.

关 键 词:特征构造  特征选择  分类器  识别率

Citrus Canker Automatic Detection Based on Computer Vision and AdaBoost Algorithm
ZHU Qing-sheng,ZHANG Min,YANG Fang-yun,LIU Feng.Citrus Canker Automatic Detection Based on Computer Vision and AdaBoost Algorithm[J].Computer Simulation,2008,25(7).
Authors:ZHU Qing-sheng  ZHANG Min  YANG Fang-yun  LIU Feng
Affiliation:ZHU Qing-sheng1,ZHANG Min1,YANG Fang-yun2,LIU Feng 1(1.Computer College of Chongqing University,Chongqing 400030,China,2.Citrus Institute of China Agriculture Academy,Chongqing 400700,China)
Abstract:Computer vision technology is introduced into fast and accurate automatic detection of citrus canker.Three key issues are discussed in this paper,which are feature construction,feature selection and system design.To construct features,Gabor transformation and edge detection algorithms are used and a feature set of color,texture and shape is obtained.Then AdaBoost algorithm is applied to select the most efficient features from the feature set.AdaBoost algorithm is also used for training classifier.To fast de...
Keywords:Feature construction  Feature selection  Classifier  Detection rate  
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