帮助 关于我们

返回检索结果

玉米品种近红外光谱的特征分析与鉴别方法
Feature Analysis and Discrimination of Varieties of Corn Based on Near Infrared Spectra

查看参考文献12篇

文摘 以玉米种子的4 000~12 000 cm~(-1)波段的漫反射近红外光谱为研究对象,提出了一种鉴别玉米品种的新方法.采用主成分分析法(PCA)来研究数据特征,发现近红外光谱在特征空间中具有显著的长条状分布特征,为此我们研究了改变样本点在PCA空间中的分布对品种鉴别的影响,并提出了归一化主成分分析 (NPCA)的特征提取算法,同时还根据近红外光谱的数据分布特点提出了一种主方向仿生模式识别的分类算法,进一步提高了鉴别正确率.鉴别模型对第一测试集的平均正确识别率达到了97. 67%,平均正确拒识率达到了98.40%,30个品种中的13个达到了100%的正确识别率;对第二测试集的平均正确拒识率达到了98. 90%,有11个品种达到了100%的正确拒识率,具有较高的鉴别准确度
其他语种文摘 A new method for the discrimination of varieties of corn was proposed based on the data set of near-infrared spectroscopy range from 4 000 to 12 000 cm~(-1) of corn seed varieties. Principal component analysis (PCA) method was used to study the feature of the data, and the authors found that the near-infrared spectroscopy of corn seed varieties has a clear feature of zonal distribution, so the correlativity between the change in the distribution of the principal component and the discrimination result was studied, according to which the normalized principal component analysis (NPCA) method was proposed. Besides, principal direction biomimetic pattern recognition (PBPR) was proposed according to the feature, which got a better discrimination result. The average correct recognition rate attained 97. 67% for test set I, and the average correct rejection rate attained 98.40%, with 13 of the 30 varieties reaching the correct recognition rate of 100%;The average correct rejection rate attained 98.90% for the test set Ⅱ, and 11 of the 30 varieties reached the correct rejection rate of 100%. It was proved that the method had a high correct discrimination rate
来源 光谱学与光谱分析 ,2010,30(12):3213-3216 【核心库】
DOI 10.3964/j.issn.1000-0593(2010)12-3213-04
关键词 近红外光谱 ; 主成分分析 ; 仿生模式识别 ; 品种鉴别
地址

中国科学院半导体研究所, 北京, 100083

语种 中文
文献类型 研究性论文
ISSN 1000-0593
学科 物理学
基金 国家自然科学基金项目
文献收藏号 CSCD:4045148

参考文献 共 12 共1页

1.  YAN Yan-lu. Foundation and Application of Near-Infrared Spectroscopy Analysis,2005 被引 1    
2.  LU Wan-zhen. Modern Near Infrared Spectroscopy Analytical Technology(Second Edition),2007 被引 2    
3.  FANG Li-min. Chinese Journal of Analytical Chemistry,2008,36(6):815 被引 2    
4.  HUANG Min. Journal of Infrared and Millimeter Waves,2006,25(5):342 被引 1    
5.  WANG Shou-jue. Acta Electronica Sinica,2002,30(10):1417 被引 5    
6.  WANG Shou-jue. Acta Electronica Sinica,2002,30(1):1 被引 2    
7.  YANG Guo-wei. Acta Electronica Sinica,2008,36(12):2490 被引 1    
8.  LI Han. Computer Engineering and Applications,2009,45(3):181 被引 1    
9.  WANG Shou-jue. Acta Electronica Sinica,2004,32(7):1057 被引 2    
10.  LIU Yan-li. Computer Applications and Software,2003,20(4):40 被引 1    
11.  CHEN Fu-bing. Computer Engineering and Applications,2005,41(34):34 被引 1    
12.  ZHANG Wen-feng. Computer Engineering and Applications,2007,43(36):246 被引 1    
引证文献 4

1 褚莹 基于近红外光谱技术实现掺假山羊奶的定性和定量检测 西北农业学报,2011,20(12):192-196
被引 4

2 黄艳华 近红外光谱在植物种及品种鉴定中的应用 中国农学通报,2014,30(6):46-51
被引 3

显示所有4篇文献

论文科学数据集
PlumX Metrics
相关文献

 作者相关
 关键词相关
 参考文献相关

iAuthor 链接
李卫军 0000-0001-9668-2883
版权所有 ©2008 中国科学院文献情报中心 制作维护:中国科学院文献情报中心
地址:北京中关村北四环西路33号 邮政编码:100190 联系电话:(010)82627496 E-mail:cscd@mail.las.ac.cn 京ICP备05002861号-4 | 京公网安备11010802043238号