DocumentCode :
2132621
Title :
Identification of less-ripen, ripen, and over-ripen grapes during harvest time based on visible and near-infrared (Vis-NIR) spectroscopy
Author :
Lv, Gang ; Yang, Haiqing ; Xu, Ning ; Mouazen, Abdul M.
Author_Institution :
Coll. of Inf. Eng., Zhejiang Univ. of Technol., Hangzhou, China
fYear :
2012
fDate :
21-23 April 2012
Firstpage :
1067
Lastpage :
1070
Abstract :
Nondestructive determination of grape ripeness is essential for vineyard harvest schedule optimization. This study aims to investigate the identification of less ripen, ripen and over-ripen grapes by visible and near infrared (Vis-NIR) spectrophotometer. A local cultivar of grape `Beyond´ was examined during harvest season from July to August, 2011. The samples were separated into three ripen degrees, e.g. less-ripen, ripen, and over-ripen, according to the sugar content in grapes. The samples were divided into a calibration set (70%) and an independent prediction set (30%). The calibration set was subjected to a partial least-squares (PLS) regression and principal components analysis (PCA) with leave-one-out cross validation. The first 10 factors, e.g. latent variables (LVs) for PLS and principal components (PCs) for PCA, were chosen as input variables to three classification models, e.g. linear discrimination analysis (LDA), back-propagation artificial neural network (BPANN) and support vector machine (SVM). These models were validated by the independent prediction set. Validation result shows that PCA-LDA and PLS-LDA models achieve higher classification accuracy than others. The LDA combined with 6 PCs performs best with 100% classification accuracy. It is concluded that Vis-NIR spectroscopy is promising for the instant identification of different ripeness of grapes. The proposed technique is useful for discriminating ripen and over-ripen grapes during harvest time.
Keywords :
agricultural products; backpropagation; calibration; infrared spectroscopy; least squares approximations; neural nets; principal component analysis; production engineering computing; regression analysis; support vector machines; BPANN; PLS; PLS-LDA models; SVM; Vis-NIR spectrophotometer; back-propagation artificial neural network; calibration set; grape ripeness nondestructive determination; independent prediction set; latent variables; less-ripen grapes identification; linear discrimination analysis; over-ripen grapes identification; partial least-squares regression; principal components analysis; ripen grapes identification; support vector machine; vineyard harvest schedule optimization; visible-near infrared spectrophotometer; Accuracy; Calibration; Pipelines; Principal component analysis; Spectroscopy; Sugar; Support vector machines; grape; ripen status; visible and near infrared spectroscopy;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Consumer Electronics, Communications and Networks (CECNet), 2012 2nd International Conference on
Conference_Location :
Yichang
Print_ISBN :
978-1-4577-1414-6
Type :
conf
DOI :
10.1109/CECNet.2012.6202201
Filename :
6202201
Link To Document :
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