Spectroscopy and Spectral Analysis, Volume. 31, Issue 7, 1777(2011)

Application of DPLS-Based LDA in Corn Qualitative Near Infrared Spectroscopy Analysis

QIN Hong*, WANG Hui-rong, LI Wei-jun, and JIN Xiao-xian
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    NIR technology is a rapid, nondestructive and user-friendly method ideally suited for Qualitative analysis. In this paper the authors present the use of discriminant partial least Squares (DPLS)-based linear discriminant analysis (LDA) in corn qualitative near infrared spectroscopy analysis. Firstly, a training set including 30 corn varieties (each variety has 20 samples) was used to build the DPLS regression model, and 28 principal components (DPLS-PCs) were obtained from original spectrum. Secondly, the DPLS-PCs scores of the training set were extracted as DPLS features. Thirdly, LDA was applied to the DPLS features, determining 26 principal components (LDA-PCs). A test sample was first projected onto the DPLS-PCs and then onto the LDA-PCs, and finally 26 DPLS+LDA features were obtained. The recognition results were obtained by minimum distance classifier. DPLS+LDA method achieved 96.18% recognition rate, while traditional DPLS regression method and DPLS feature extraction method only achieved 85.38% and 95.76% recognition rate respectively. The experiment results indicated that DPLS+LDA method is with better generalization ability compared with traditional DPLS regression method and NIRS analysis by DPLS+LDA method is an efficient way to discriminate corn species.

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    QIN Hong, WANG Hui-rong, LI Wei-jun, JIN Xiao-xian. Application of DPLS-Based LDA in Corn Qualitative Near Infrared Spectroscopy Analysis[J]. Spectroscopy and Spectral Analysis, 2011, 31(7): 1777

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    Paper Information

    Received: Sep. 21, 2010

    Accepted: --

    Published Online: Aug. 29, 2011

    The Author Email: Hong QIN (qinh@semi.ac.cn)

    DOI:10.3964/j.issn.1000-0593(2011)07-1777-05

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