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Deep learning-based automatic detection of productive tillers in rice

机译:基于深度学习的水稻生产耕作的自动检测

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摘要

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 highthroughput 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.
机译:每个植物的生产分蘖数是与水稻作物籽粒产量相关的重要农艺性状之一。但是,手动计数生产力分蘖是耗时,费力和容易出错的。在该研究中,基于深度学习卷积神经网络(CNN)提出了一种自动检测和计数稻米作物生产分蘖的方法。在各种环境条件下,使用来自各种稻米作物的移动电话拍摄的大量现场图像培训。设计了一个Web应用程序,集成了训练的CNN模型和Django Server,专为生产分蘖的快速和稳定性检测而设计。对基于现场的实际应用程序评估了Web应用程序的性能。结果表明,所选择的CNN模型具有高精度和快速检测率。通过将Web应用程序应用于200个现场图像,每张图像5到30分蘖,无论用于图像采取的米饭种类或类型的移动电话如何,都检测到生产耕作数量。在所有情况下,Web应用程序检测和手动计数之间的测定系数超过0.97。总体而言,与手动计数相比,Web应用程序的准确性超过99%。此外,Web应用程序的性能不受环境条件的影响,例如稻田中的照明条件(阴天或晴天)和水反射。

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