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基于改进KNN算法在近红外光谱中的模式识别研究
引用本文:张磊,丁香乾,赵雪岑.基于改进KNN算法在近红外光谱中的模式识别研究[J].现代电子技术,2012,35(20):121-123.
作者姓名:张磊  丁香乾  赵雪岑
作者单位:1. 中国海洋大学信息科学与工程学院,山东青岛,266071
2. 中国海洋大学信息科学与工程学院,山东青岛266071;中国海洋大学信息工程中心,山东青岛266071
摘    要:针对近红外光谱数据特征变量个数远大于样本数以及光谱点之间存在强相关的特点,通过主成分分析压缩光谱信息抽提独立的特征变量,在最佳主成分个数下计算各样本到不同类中心的马氏距离,进而统计整体的预测正确率。文中采用改进的KNN算法对四种牌号的卷烟近红外光谱数据进行了类别预测,在明显改进效率的同时,获得了更为准确的预测结果。

关 键 词:近红外光谱  模式识别  主成分  马氏距离  KNN

Pattern recognition in near-infrared spectrum by improved KNN algorithm
ZHANG Lei , DING Xiang-qian , ZHAO Xue-cen.Pattern recognition in near-infrared spectrum by improved KNN algorithm[J].Modern Electronic Technique,2012,35(20):121-123.
Authors:ZHANG Lei  DING Xiang-qian  ZHAO Xue-cen
Affiliation:1(1.College of Information Science and Engineering,Ocean University of China,Qingdao 266071,China; 2.Center of Information Engineering,Ocean University of China,Qingdao 266071,China)
Abstract:For the number of variables is much larger than that of samples and the strong correlation characteristics between spectral points,the spectral information was compressed and independent characteristic variables were extracted by principal component analysis.The Mahalanobis distance from each sample to different centers was calculated in the best number of principal components.The overall prediction correctness was counted.The improved KNN algorithmis used to forecast four brands of cigarette category of near-infrared spectral data.A more accurate prediction result was obtained,and at the same time,the efficiency was significantly improved.
Keywords:near-infrared spectrum  pattern recognition  principal component  Mahalanobis distance  KNN
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