Plant Density Estimation Using UAV Imagery and Deep Learning

2022-11-23 | journal article. A publication with affiliation to the University of Göttingen.

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​Plant Density Estimation Using UAV Imagery and Deep Learning​
Peng, J.; Rezaei, E. E.; Zhu, W.; Wang, D.; Li, H.; Yang, B. & Sun, Z.​ (2022) 
Remote Sensing14(23).​ DOI: https://doi.org/10.3390/rs14235923 

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Authors
Peng, Jinbang; Rezaei, Ehsan Eyshi; Zhu, Wanxue; Wang, Dongliang; Li, He; Yang, Bin; Sun, Zhigang
Abstract
Plant density is a significant variable in crop growth. Plant density estimation by combining unmanned aerial vehicles (UAVs) and deep learning algorithms is a well-established procedure. However, flight companies for wheat density estimation are typically executed at early development stages. Further exploration is required to estimate the wheat plant density after the tillering stage, which is crucial to the following growth stages. This study proposed a plant density estimation model, DeNet, for highly accurate wheat plant density estimation after tillering. The validation results presented that (1) the DeNet with global-scale attention is superior in plant density estimation, outperforming the typical deep learning models of SegNet and U-Net; (2) the sigma value at 16 is optimal to generate heatmaps for the plant density estimation model; (3) the normalized inverse distance weighted technique is robust to assembling heatmaps. The model test on field-sampled datasets revealed that the model was feasible to estimate the plant density in the field, wherein a higher density level or lower zenith angle would degrade the model performance. This study demonstrates the potential of deep learning algorithms to capture plant density from high-resolution UAV imageries for wheat plants including tillers.
Issue Date
23-November-2022
Journal
Remote Sensing 
Organization
Fakultät für Agrarwissenschaften ; Department für Nutzpflanzenwissenschaften ; Abteilung Pflanzenbau 
eISSN
2072-4292
Language
English
Sponsor
Strategic Priority Research Program of the Chinese Academy of Sciences
National Key Research and Development Program of China
National Natural Science Foundation of China
Program of Yellow River Delta Scholars

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