Deep learning-based automatic detection of productive tillers in rice

•A deep learning-based method was developed for rice productive tiller detection.•The method was implemented in a high-throughput and low-cost web app.•The web app had an accuracy of over 99% compared with manual counting results.•The performance of the web app was unaffected by the environmental co...

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Veröffentlicht in:Computers and electronics in agriculture 2020-10, Vol.177, p.105703, Article 105703
Hauptverfasser: Deng, Ruoling, Jiang, Yu, Tao, Ming, Huang, Xunan, Bangura, Kemoh, Liu, Chuang, Lin, Jingchuan, Qi, Long
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container_start_page 105703
container_title Computers and electronics in agriculture
container_volume 177
creator Deng, Ruoling
Jiang, Yu
Tao, Ming
Huang, Xunan
Bangura, Kemoh
Liu, Chuang
Lin, Jingchuan
Qi, Long
description •A deep learning-based method was developed for rice productive tiller detection.•The method was implemented in a high-throughput and low-cost web app.•The web app had an accuracy of over 99% compared with manual counting results.•The performance of the web app was unaffected by the environmental conditions. The number of productive tillers per plant is one of the important agronomic traits associated with the grain yield of rice crop. However, manual counting of productive tillers is time-consuming, laborious and error-prone. In this study, a method for automatically detecting and counting productive tillers of rice crop was proposed based on deep learning convolutional neural network (CNN). The CNN model was trained using large amounts of in-field images taken by mobile phones from various varieties of rice crops under various environmental conditions. A Web app, integrating the trained CNN model and a Django server, was designed for fast and high-throughput detection of productive tillers. The performance of the Web app was evaluated for field-based practical applications. Results showed that the selected CNN model had a high precision and a fast detection rate. Through applying the Web app to 200 in-field images with 5 to 30 tillers per image, the number of productive tillers detected agreed well with manual counting data, regardless of rice variety or type of mobile phone used for image taking. The coefficients of determination between the Web app detection and manual counting of tillers were over 0.97 in all cases. Overall, compared to the manual counting, the accuracy of the Web app was over 99%. Furthermore, the performance of the Web app was not affected by the environmental conditions, such as illumination condition (cloudy or sunny) and water reflection in paddy fields.
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The number of productive tillers per plant is one of the important agronomic traits associated with the grain yield of rice crop. However, manual counting of productive tillers is time-consuming, laborious and error-prone. In this study, a method for automatically detecting and counting productive tillers of rice crop was proposed based on deep learning convolutional neural network (CNN). The CNN model was trained using large amounts of in-field images taken by mobile phones from various varieties of rice crops under various environmental conditions. A Web app, integrating the trained CNN model and a Django server, was designed for fast and high-throughput detection of productive tillers. The performance of the Web app was evaluated for field-based practical applications. Results showed that the selected CNN model had a high precision and a fast detection rate. Through applying the Web app to 200 in-field images with 5 to 30 tillers per image, the number of productive tillers detected agreed well with manual counting data, regardless of rice variety or type of mobile phone used for image taking. The coefficients of determination between the Web app detection and manual counting of tillers were over 0.97 in all cases. Overall, compared to the manual counting, the accuracy of the Web app was over 99%. 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The number of productive tillers per plant is one of the important agronomic traits associated with the grain yield of rice crop. However, manual counting of productive tillers is time-consuming, laborious and error-prone. In this study, a method for automatically detecting and counting productive tillers of rice crop was proposed based on deep learning convolutional neural network (CNN). The CNN model was trained using large amounts of in-field images taken by mobile phones from various varieties of rice crops under various environmental conditions. A Web app, integrating the trained CNN model and a Django server, was designed for fast and high-throughput detection of productive tillers. The performance of the Web app was evaluated for field-based practical applications. Results showed that the selected CNN model had a high precision and a fast detection rate. 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source Elsevier ScienceDirect Journals
subjects Agronomy
Applications programs
Artificial neural networks
Cell phones
Convolutional neural network
Crop yield
Deep learning
Error analysis
Productive tiller number
Rice
Software
Web APP
title Deep learning-based automatic detection of productive tillers in rice
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