Identification of the Presence of the "Swollen Shoot" Disease in Endemic Areas in Côte d'Ivoire Via Convolutional Neural Networks

Coulibaly Mamadou, Silue Kolo, Konan Hyacinthe Kouassi, Olivier Asseu, Olivier Asseu
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Abstract

The detection of Swollen Shoot disease and its control is one of the major objectives of research related to sustainable cocoa farming in Côte d'Ivoire. To contain the epidemic, the Cocoa Coffee Council (CCC) in collaboration with the National Agency for Support to Rural Development (ANADER) is responsible for prospecting and delimiting the infected areas as well as for uprooting suspect cocoa plants. since there is currently no cure for this virus. However, this monitoring is done with the naked eye and mobilizes many human resources (planters and plant pathologists). This process is delicate and time-consuming, resulting in significant economic losses for both planters and Côte d’Ivoire. Convolutional Neural Networks (CNN) emerged from the study of the visual cortex of the brain. CNNs are particularly used in image processing and offer many applications related to precision agriculture. Over the past few years, thanks to the increase in computing power, and the amount of training data available, CNNs have been capable of superhuman performance on complex visual tasks. They are at the heart of automatic image and video classification systems. The objective of the work presented in this article is to establish a collaborative solution between CNN-based image processing and plant pathology. The solution will reduce the human labor time required by using algorithms to facilitate the identification of swollen shoot disease in a cocoa plantation. The use of images collected from a drone on cocoa plantations as input information, allowed our learning model, based on CNNs, to guide a new approach for automating Swollen diagnosis. Shoot with our model, we have achieved a level of accuracy of 98% based on the known symptoms.
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通过卷积神经网络识别Côte科特迪瓦流行地区“肿芽”病的存在
肿芽病的检测及其控制是Côte科特迪瓦可持续可可种植相关研究的主要目标之一。为了控制这一流行病,可可咖啡委员会与国家农村发展支助机构合作,负责勘探和划定受感染地区,并将可疑的可可植物连根拔起。因为目前还没有治愈这种病毒的方法。然而,这种监测是用肉眼完成的,并调动了许多人力资源(种植人员和植物病理学家)。这一过程既复杂又耗时,给种植户和Côte科特迪瓦都造成了重大经济损失。卷积神经网络(CNN)源于对大脑视觉皮层的研究。cnn特别用于图像处理,并提供了许多与精准农业相关的应用。在过去的几年里,由于计算能力的提高和可用训练数据的数量,cnn已经能够在复杂的视觉任务上取得超人的表现。它们是自动图像和视频分类系统的核心。本文提出的工作目标是在基于cnn的图像处理和植物病理学之间建立一个协作解决方案。该解决方案将通过使用算法来帮助识别可可种植园的肿芽病,从而减少所需的人力劳动时间。使用从可可种植园的无人机收集的图像作为输入信息,允许我们基于cnn的学习模型指导自动化肿胀诊断的新方法。使用我们的模型,基于已知症状,我们已经达到了98%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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