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Deep Learning Enables Instant and Versatile Estimation of Rice Yield Using Ground-Based RGB Images

Authors :
Yu Tanaka
Tomoya Watanabe
Keisuke Katsura
Yasuhiro Tsujimoto
Toshiyuki Takai
Takashi Sonam Tashi Tanaka
Kensuke Kawamura
Hiroki Saito
Koki Homma
Salifou Goube Mairoua
Kokou Ahouanton
Ali Ibrahim
Kalimuthu Senthilkumar
Vimal Kumar Semwal
Eduardo Jose Graterol Matute
Edgar Corredor
Raafat El-Namaky
Norvie Manigbas
Eduardo Jimmy P. Quilang
Yu Iwahashi
Kota Nakajima
Eisuke Takeuchi
Kazuki Saito
Source :
Plant Phenomics, Vol 5 (2023)
Publication Year :
2023
Publisher :
American Association for the Advancement of Science (AAAS), 2023.

Abstract

Rice (Oryza sativa L.) is one of the most important cereals, which provides 20% of the world’s food energy. However, its productivity is poorly assessed especially in the global South. Here, we provide a first study to perform a deep-learning-based approach for instantaneously estimating rice yield using red-green-blue images. During ripening stage and at harvest, over 22,000 digital images were captured vertically downward over the rice canopy from a distance of 0.8 to 0.9 m at 4,820 harvesting plots having the yield of 0.1 to 16.1 t·ha−1 across 6 countries in Africa and Japan. A convolutional neural network applied to these data at harvest predicted 68% variation in yield with a relative root mean square error of 0.22. The developed model successfully detected genotypic difference and impact of agronomic interventions on yield in the independent dataset. The model also demonstrated robustness against the images acquired at different shooting angles up to 30° from right angle, diverse light environments, and shooting date during late ripening stage. Even when the resolution of images was reduced (from 0.2 to 3.2 cm·pixel−1 of ground sampling distance), the model could predict 57% variation in yield, implying that this approach can be scaled by the use of unmanned aerial vehicles. Our work offers low-cost, hands-on, and rapid approach for high-throughput phenotyping and can lead to impact assessment of productivity-enhancing interventions, detection of fields where these are needed to sustainably increase crop production, and yield forecast at several weeks before harvesting.

Details

Language :
English
ISSN :
26436515
Volume :
5
Database :
Directory of Open Access Journals
Journal :
Plant Phenomics
Publication Type :
Academic Journal
Accession number :
edsdoj.33fee4340fb848de8ab3297238874e73
Document Type :
article
Full Text :
https://doi.org/10.34133/plantphenomics.0073