Rice Plant Disease Detection System Using Transfer Learning with MobilenetV3Large

Rifqi Raenanda Faqih, Muhamad Irsan, Muhammad Faris Fathoni
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引用次数: 0

Abstract

In this study, we address that foliar diseases of rice (Oryza sativa L.) pose a serious threat to agricultural productivity and propose an effective method for disease detection using Convolutional Neural Network (CNN). We use transfer learning on the MobilenetV3Large model to improve the model's performance. Our study involves a curated dataset containing images of infected rice leaves, followed by a careful preprocessing step. This dataset is then used to train a CNN model. The results show a commendable accuracy rate of over 90% and almost reaching 95% when the model is trained over 200 epochs. The model performance graph shows a consistent upward trend in accuracy coupled with decreasing loss during the training process. Furthermore, the classification results highlight the ability of the model to discriminate between different types of diseases affecting rice leaves. This study demonstrates the effectiveness of our proposed method and positions it as a valuable tool for leaf disease detection in rice. By providing faster and more accurate control measures, our approach has the potential to significantly improve agricultural productivity. The successful application of the CNN model using MobilenetV3Large highlights its adaptability and robust performance in addressing the pressing problem of rice leaf diseases and provides a promising path for future advances in precision agriculture.
利用迁移学习和 MobilenetV3Large 的水稻植物病害检测系统
在本研究中,我们针对水稻(Oryza sativa L.)叶面病害对农业生产力构成严重威胁的问题,提出了一种利用卷积神经网络(CNN)进行病害检测的有效方法。我们在 MobilenetV3Large 模型上使用迁移学习来提高模型的性能。我们的研究涉及一个包含受感染水稻叶片图像的数据集,然后是一个仔细的预处理步骤。然后使用该数据集训练 CNN 模型。结果显示,该模型的准确率超过 90%,当训练时间超过 200 个历元时,准确率几乎达到 95%。模型性能图显示,准确率呈持续上升趋势,同时在训练过程中损失不断减少。此外,分类结果凸显了该模型区分不同类型水稻叶片病害的能力。这项研究证明了我们提出的方法的有效性,并将其定位为水稻叶片病害检测的重要工具。通过提供更快、更准确的控制措施,我们的方法有望显著提高农业生产率。使用 MobilenetV3Large 成功应用 CNN 模型,凸显了它在解决水稻叶病这一紧迫问题上的适应性和强大性能,并为未来精准农业的发展提供了一条充满希望的道路。
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