On-The-Go Hyperspectral Imaging Under Field Conditions and Machine Learning for the Classification of Grapevine Varieties

被引:52
作者
Gutierrez, Salvador
Fernandez-Novales, Juan
Diago, Maria P.
Tardaguila, Javier [1 ]
机构
[1] Univ La Rioja, Inst Ciencias Vid & Vino, CSIC, Logrono, Spain
来源
FRONTIERS IN PLANT SCIENCE | 2018年 / 9卷
基金
欧盟地平线“2020”;
关键词
MLP; plant phenotyping; discrimination; sensors; proximal sensing; remote sensing; non-invasive sensors; MAIZE SEEDS; SPECTROSCOPY; NIR; IDENTIFICATION; CULTIVARS; NETWORKS;
D O I
10.3389/fpls.2018.01102
中图分类号
Q94 [植物学];
学科分类号
071001 ;
摘要
Grapevine varietal classification is an important plant phenotyping issue for grape growing and wine industry. This task has been achieved from destructive techniques like classic ampelography and DNA analysis under laboratory conditions. This work displays a new approach for the classification of a high number of grapevine (Vitis vinifera L.) varieties under field conditions using on-the-go hyperspectral imaging and different machine learning algorithms. On-the-go imaging was performed under natural illumination using a hyperspectral cameramounted on an all-terrain vehicle at 5 km/h. Spectra were acquired over two different leaf phenological stages on the canopy of 30 different varieties on a commercial vineyard located in La Rioja, Spain. A total of 1,200 spectral samples were generated. Support vector machines (SVM) and artificial neural networks (multilayer perceptrons, MLP) were used for the development of a large number of models, testing different algorithm parameters and spectral pre-processing techniques. Both classifiers yielded notable performance values and were able to train models with recall F1 scores and area under the receiver operating characteristic curve marks up to 0.99 for 5-fold cross validation. Statistical analyses supported that the best SVM kernel was linear and the best activation function for MLP was the hyperbolic tangent function. The prediction performance for individual varieties of MLP ranged from 0.94 to 0.99, displaying low levels of variability. In the case of SVM, slightly higher differences were obtained, ranging from 0.83 to 0.97 for individual varieties. These results support the possibility of deploying an on-the-go hyperspectral imaging system in the field capable of successfully classifying leaves from different grapevine varieties. This technology could thus be considered as a new useful non-destructive tool for plant phenotyping under field conditions.
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页数:11
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