会议专题

NIR Spectroscopy Identification of Persimmon Varieties Based on PCA-SVM

In order to achieve non-destructive measurement of varieties in persimmon, a fast discrimination method based on Vis/NIRS spectroscopy was put forward. A Field Spec 3 spectroradiometer was used for collecting 22 sample spectra data of the three kinds of persimmon separately. Then principal component analysis (PCA) was used to process the spectral data after pretreat-ment. The near infrared fingerprint of persimmon was acquired by principal component analysis(PCA), and support vector machine (SVM) methods were used to further identify the persimmon separately. The result of PCA indicated that the score map made by the scores of PCI, PC2 and PC3 was used, and 8 principal components (PCs) were selected as the input of support vector machine (SVM) based on the reliabilities of PCs of 99. 888%.51 persimmon samples were used for calibration and the remaining 15 persimmon samples were used for validation. A oneagainst-all multi-class SVM model was built, and the result showed that SVM possessing with the RBF kernel function has the best identification capabilities with the accuracy of 100%. This research indicated that the mixed algorithm method of principal component analy-sis(PCA) and support vector Machine (SVM) has a good identification effect, and can work as a new method for quick, efficient and correct identification of persimmon separately.

Vis-NIR Spectroscopy support vector machine (SVM) Persim-mon Principal component analysis (PCA)

Shujuan Zhang Dengfei Jie Haihong Zhang

国际会议

The 4th IFIP International on Computer and Computing Technologies in Agriculture and the 4th Symposium on Development of Rural Information(第四届国际计算机及计算机技术在农业中的应用研讨会暨第四届中国农业信息化发展论坛 CCTA 2010)

南昌

英文

118-123

2010-10-22(万方平台首次上网日期,不代表论文的发表时间)