Mirzaei Mohsen, Marofi Safar, Abbasi Mozhgan, Solgi Eisa, Karimi Rholah, Verrelst Jochem
Grape Environmental Science Department, Research Institute for Grapes and Raisin (RIGR), Malayer University, Islamic Republic of Iran.
Faculty of Natural Resource and Earth Science, Shahrekord University, Islamic Republic of Iran.
Int J Appl Earth Obs Geoinf. 2019 Aug;80:26-37. doi: 10.1016/j.jag.2019.04.002.
Field spectroscopy is an accurate, rapid and nondestructive technique for monitoring of agricultural plant characteristics. Among these, identification of grapevine varieties is one of the most important factors in viticulture and wine industry. This study evaluated the discriminatory ability of field hyperspectral data and statistical techniques in case of five common grapevine varieties in the western of Iran. A total of 3000 spectral samples were acquired at leaf and canopy levels. Then, in order to identify the best approach, two types of hyperspectral data (wavelengths from 350 to 2500 nm and 32 spectral indices), two data reduction methods (PLSR and ANOVA-PCA) and two classification algorithms (LDA and SVM) were applied in a total of 16 scenarios. Results showed that the grapevine varieties were discriminated with overall accuracy of 89.88%-100% in test sets. Among the data reduction methods, the combination of ANOVA and PCA yielded higher performance as opposed to PLSR. Accordingly, optimal wavelengths in discrimination of studied grapevine varieties were located in vicinity of 695, 752, 1148, 1606 nm and 582, 687, 1154, 1927 nm at leaf and canopy levels, respectively. Optimal spectral indices were R680, WI, SGB and RATIO975_2, DattA, Greenness at leaf and canopy levels, respectively. Also, the importance of spectral regions in discriminating studied grapevine varieties was ranked as near-infrared > mid-infrared and red edge region > visible. As a general conclusion, the canopyspectral indices-ANOVA-PCA-SVM scenario discriminated the studied species most accurately.
野外光谱学是一种用于监测农业植物特征的准确、快速且无损的技术。其中,葡萄品种的识别是葡萄栽培和葡萄酒行业中最重要的因素之一。本研究评估了野外高光谱数据和统计技术对伊朗西部五种常见葡萄品种的鉴别能力。在叶片和冠层水平共采集了3000个光谱样本。然后,为了确定最佳方法,在总共16种场景中应用了两种类型的高光谱数据(波长范围为350至2500 nm和32个光谱指数)、两种数据降维方法(偏最小二乘回归和方差分析 - 主成分分析)以及两种分类算法(线性判别分析和支持向量机)。结果表明,在测试集中,葡萄品种的鉴别总体准确率为89.88% - 100%。在数据降维方法中,与偏最小二乘回归相比,方差分析和主成分分析的组合表现出更高的性能。因此,在叶片和冠层水平鉴别所研究葡萄品种的最佳波长分别位于695、752、1148、1606 nm附近以及582、687、1154、1927 nm附近。最佳光谱指数在叶片和冠层水平分别为R680、WI、SGB和RATIO975_2、DattA、绿度。此外,鉴别所研究葡萄品种的光谱区域重要性排序为近红外 > 中红外以及红边区域 > 可见光。总的来说,冠层光谱指数 - 方差分析 - 主成分分析 - 支持向量机方案鉴别所研究品种最为准确。