一种基于深度学习的更快区域卷积神经网络(Faster R-CNN)框架实时诊断水稻叶部病害的方法。

A real-time approach of diagnosing rice leaf disease using deep learning-based faster R-CNN framework.

作者信息

Bari Bifta Sama, Islam Md Nahidul, Rashid Mamunur, Hasan Md Jahid, Razman Mohd Azraai Mohd, Musa Rabiu Muazu, Ab Nasir Ahmad Fakhri, P P Abdul Majeed Anwar

机构信息

Faculty of Electrical & Electronics Engineering Technology, Universiti Malaysia Pahang, Pekan, Pahang, Malaysia.

Innovative Manufacturing, Mechatronics and Sports Laboratory, Faculty of Manufacturing and Mechatronic Engineering Technology, Universiti Malaysia Pahang, Pekan, Pahang, Malaysia.

出版信息

PeerJ Comput Sci. 2021 Apr 7;7:e432. doi: 10.7717/peerj-cs.432. eCollection 2021.

Abstract

The rice leaves related diseases often pose threats to the sustainable production of rice affecting many farmers around the world. Early diagnosis and appropriate remedy of the rice leaf infection is crucial in facilitating healthy growth of the rice plants to ensure adequate supply and food security to the rapidly increasing population. Therefore, machine-driven disease diagnosis systems could mitigate the limitations of the conventional methods for leaf disease diagnosis techniques that is often time-consuming, inaccurate, and expensive. Nowadays, computer-assisted rice leaf disease diagnosis systems are becoming very popular. However, several limitations ranging from strong image backgrounds, vague symptoms' edge, dissimilarity in the image capturing weather, lack of real field rice leaf image data, variation in symptoms from the same infection, multiple infections producing similar symptoms, and lack of efficient real-time system mar the efficacy of the system and its usage. To mitigate the aforesaid problems, a faster region-based convolutional neural network (Faster R-CNN) was employed for the real-time detection of rice leaf diseases in the present research. The Faster R-CNN algorithm introduces advanced RPN architecture that addresses the object location very precisely to generate candidate regions. The robustness of the Faster R-CNN model is enhanced by training the model with publicly available online and own real-field rice leaf datasets. The proposed deep-learning-based approach was observed to be effective in the automatic diagnosis of three discriminative rice leaf diseases including rice blast, brown spot, and hispa with an accuracy of 98.09%, 98.85%, and 99.17% respectively. Moreover, the model was able to identify a healthy rice leaf with an accuracy of 99.25%. The results obtained herein demonstrated that the Faster R-CNN model offers a high-performing rice leaf infection identification system that could diagnose the most common rice diseases more precisely in real-time.

摘要

水稻叶部相关病害常常对水稻的可持续生产构成威胁,影响着全球众多农民。对水稻叶部感染进行早期诊断并采取适当的防治措施,对于促进水稻植株健康生长、确保为快速增长的人口提供充足供应和粮食安全至关重要。因此,机器驱动的病害诊断系统可以缓解传统叶部病害诊断技术的局限性,传统技术往往耗时、不准确且成本高昂。如今,计算机辅助水稻叶部病害诊断系统正变得非常流行。然而,存在几个限制因素,包括图像背景强烈、症状边缘模糊、图像采集天气不同、缺乏实地水稻叶图像数据、同一感染的症状变化、多种感染产生相似症状以及缺乏高效的实时系统,这些都影响了系统的有效性及其应用。为了缓解上述问题,本研究采用了基于区域的快速卷积神经网络(Faster R-CNN)对水稻叶部病害进行实时检测。Faster R-CNN算法引入了先进的区域提议网络(RPN)架构,能够非常精确地定位目标以生成候选区域。通过使用公开可用的在线数据集和自己的实地水稻叶数据集对模型进行训练,增强了Faster R-CNN模型的鲁棒性。所提出的基于深度学习的方法在自动诊断三种有区别的水稻叶部病害(包括稻瘟病、褐斑病和稻负泥虫)方面被观察到是有效的,准确率分别为98.09%、98.85%和99.17%。此外,该模型能够以99.25%的准确率识别健康的水稻叶。本文获得的结果表明,Faster R-CNN模型提供了一个高性能的水稻叶部感染识别系统,能够实时更精确地诊断最常见的水稻病害。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/71c7/8049121/7f9a44a52d47/peerj-cs-07-432-g001.jpg

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