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A Mixed Data-Based Deep Neural Network to Estimate Leaf Area Index in Wheat Breeding Trials
被引:38
作者:
Enrique Apolo-Apolo, Orly
[1
]
Perez-Ruiz, Manuel
[1
]
Martinez-Guanter, Jorge
[1
]
Egea, Gregorio
[1
]
机构:
[1] Univ Seville, Tech Sch Agr Engn ETSIA, Area Agroforestry Engn, Ctra Utrera Km 1, Seville 41013, Spain
来源:
AGRONOMY-BASEL
|
2020年
/
10卷
/
02期
关键词:
plant phenotyping;
leaf area;
index estimation;
artificial intelligence;
wheat;
breeding;
crop monitoring;
GAP FRACTION;
CANOPY;
GROWTH;
ERRORS;
CROPS;
LAI;
D O I:
10.3390/agronomy10020175
中图分类号:
S3 [农学(农艺学)];
学科分类号:
0901 ;
摘要:
Remote and non-destructive estimation of leaf area index (LAI) has been a challenge in the last few decades as the direct and indirect methods available are laborious and time-consuming. The recent emergence of high-throughput plant phenotyping platforms has increased the need to develop new phenotyping tools for better decision-making by breeders. In this paper, a novel model based on artificial intelligence algorithms and nadir-view red green blue (RGB) images taken from a terrestrial high throughput phenotyping platform is presented. The model mixes numerical data collected in a wheat breeding field and visual features extracted from the images to make rapid and accurate LAI estimations. Model-based LAI estimations were validated against LAI measurements determined non-destructively using an allometric relationship obtained in this study. The model performance was also compared with LAI estimates obtained by other classical indirect methods based on bottom-up hemispherical images and gaps fraction theory. Model-based LAI estimations were highly correlated with ground-truth LAI. The model performance was slightly better than that of the hemispherical image-based method, which tended to underestimate LAI. These results show the great potential of the developed model for near real-time LAI estimation, which can be further improved in the future by increasing the dataset used to train the model.
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页数:21
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