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Automated Counting of Rice Panicle by Applying Deep Learning Model to Images from Unmanned Aerial Vehicle Platform

The number of panicles per unit area is a common indicator of rice yield and is of great significance to yield estimation, breeding, and phenotype analysis. Traditional counting methods have various drawbacks, such as long delay times and high subjectivity, and they are easily perturbed by noise. To...

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Published in:Sensors (Basel, Switzerland) Switzerland), 2019-07, Vol.19 (14), p.3106
Main Authors: Zhou, Chengquan, Ye, Hongbao, Hu, Jun, Shi, Xiaoyan, Hua, Shan, Yue, Jibo, Xu, Zhifu, Yang, Guijun
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cited_by cdi_FETCH-LOGICAL-c535t-533a23070d753cc080ce64b9adcbdfa97b360e5f10c993367c264260b75c724a3
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description The number of panicles per unit area is a common indicator of rice yield and is of great significance to yield estimation, breeding, and phenotype analysis. Traditional counting methods have various drawbacks, such as long delay times and high subjectivity, and they are easily perturbed by noise. To improve the accuracy of rice detection and counting in the field, we developed and implemented a panicle detection and counting system that is based on improved region-based fully convolutional networks, and we use the system to automate rice-phenotype measurements. The field experiments were conducted in target areas to train and test the system and used a rotor light unmanned aerial vehicle equipped with a high-definition RGB camera to collect images. The trained model achieved a precision of 0.868 on a held-out test set, which demonstrates the feasibility of this approach. The algorithm can deal with the irregular edge of the rice panicle, the significantly different appearance between the different varieties and growing periods, the interference due to color overlapping between panicle and leaves, and the variations in illumination intensity and shading effects in the field. The result is more accurate and efficient recognition of rice-panicles, which facilitates rice breeding. Overall, the approach of training deep learning models on increasingly large and publicly available image datasets presents a clear path toward smartphone-assisted crop disease diagnosis on a global scale.
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source Publicly Available Content Database; PubMed Central
subjects Agricultural production
Agriculture
Algorithms
Automation
Crop yield
Deep learning
Delay time
Flowers & plants
High definition
Labeling
Laboratories
Medical imaging
Methods
Neural networks
Optimization
Plant diseases
Remote sensing
Rice
rice panicle counting
Sensors
Shading
Smartphones
UAV platform
Unmanned aerial vehicles
Vehicles
yield estimation
title Automated Counting of Rice Panicle by Applying Deep Learning Model to Images from Unmanned Aerial Vehicle Platform
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