Arid
DOI10.1016/j.compag.2023.107723
Leaf area index estimation of pergola-trained vineyards in arid regions using classical and deep learning methods based on UAV-based RGB images
Ilniyaz, Osman; Du, Qingyun; Shen, Huanfeng; He, Wenwen; Feng, Luwei; Azadi, Hossein; Kurban, Alishir; Chen, Xi
通讯作者Kurban, A
来源期刊COMPUTERS AND ELECTRONICS IN AGRICULTURE
ISSN0168-1699
EISSN1872-7107
出版年2023
卷号207
英文摘要Timely and accurate mapping of leaf area index (LAI) in vineyards plays an important role for management choices in precision agricultural practices. However, only a little work has been done to extract the LAI of pergola-trained vineyards using higher spatial resolution remote sensing data. The main objective of this study was to evaluate the ability of unmanned aerial vehicle (UAV) imageries to estimate the LAI of pergola-trained vineyards using shallow and deep machine learning (ML) methods. Field trials were conducted in different growth seasons in 2021 by collecting 465 LAI samples. Firstly, this study trained five classical shallow ML models and an ensemble learning model by using different spectral and textural indices calculated from UAV imageries, and the most correlated or useful features for LAI estimations in different growth stages were differentiated. Then, due to the classical ML approaches need the arduous computation of multiple indices and feature selection procedures, another ResNet-based convolutional neural network (CNN) model was constructed which can be directly fed by cropped images. Furthermore, this study introduced a new image data augmentation method which is applicable to regression problems. Results indicated that the textural indices performed better than spectral indices, while the combination of them can improve estimation results, and the ensemble learning method showed the best among classical ML models. By choosing the optimal input image size, the CNN model we constructed estimated the LAI most effectively without extracting and selecting the features manually. The proposed image data augmentation method can generate new training images with new labels by mosaicking the original ones, and the CNN model showed improved performance after using this method compared to those using only the original images, or augmented by rotation and flipping methods. This data augmentation method can be applied to other regression models to extract growth parameters of crops using remote sensing data, and we conclude that the UAV imagery and deep learning methods are promising in LAI estimations of pergola-trained vineyards.
英文关键词Leaf area index UAV Spectral features Textural features Machine learning CNN Data augmentation
类型Article
语种英语
收录类别SCI-E
WOS记录号WOS:000991765800001
WOS关键词VEGETATION INDEXES ; COVER PHOTOGRAPHY ; CHLOROPHYLL CONTENT ; TREES ; LAI ; PRINCIPLES ; ALGORITHM ; BIOMASS ; YIELD ; FAPAR
WOS类目Agriculture, Multidisciplinary ; Computer Science, Interdisciplinary Applications
WOS研究方向Agriculture ; Computer Science
资源类型期刊论文
条目标识符http://119.78.100.177/qdio/handle/2XILL650/395815
推荐引用方式
GB/T 7714
Ilniyaz, Osman,Du, Qingyun,Shen, Huanfeng,et al. Leaf area index estimation of pergola-trained vineyards in arid regions using classical and deep learning methods based on UAV-based RGB images[J],2023,207.
APA Ilniyaz, Osman.,Du, Qingyun.,Shen, Huanfeng.,He, Wenwen.,Feng, Luwei.,...&Chen, Xi.(2023).Leaf area index estimation of pergola-trained vineyards in arid regions using classical and deep learning methods based on UAV-based RGB images.COMPUTERS AND ELECTRONICS IN AGRICULTURE,207.
MLA Ilniyaz, Osman,et al."Leaf area index estimation of pergola-trained vineyards in arid regions using classical and deep learning methods based on UAV-based RGB images".COMPUTERS AND ELECTRONICS IN AGRICULTURE 207(2023).
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