使用 RESNET-50 神经网络诊断芒果叶疾病

Djarot Hindarto
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摘要

本研究的重点是利用最先进的卷积神经网络(特别是 RESNET-50)对芒果叶片进行病害诊断。最终目标是利用叶片图像分析,开发出一种值得信赖的芒果植物病害检测方法。所采用的方法包括收集大量数据集,其中包含一系列芒果叶病。然后,通过在图像数据上训练 RESNET-50 模型,开发了一个分类系统。得益于 RESNET-50 的深度复杂架构,该系统能够从芒果叶图片中学习到异常复杂和深刻的视觉模式,从而改进了特征提取。测试准确率为 99.16%,测试损失仅为 0.4332,结果表明这是一个非常可靠的系统。这一令人印象深刻的精确度水平验证了该系统能够正确区分和归类芒果叶病。因此,本案例证明了 RESNET-50 模型在农业上的应用前景广阔,并为芒果植物的病害检测提供了可靠而有效的手段。这项研究为不断增长的知识库增添了新的内容,有助于农业专业人员和农民及早发现芒果叶片上的病害症状,从而及时采取预防措施。这些发现还具有更广泛的意义,例如,在不同作物中使用可比技术进行病害分析,有可能提高农业生产率和管理水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Use of RESNET-50 Neural Network in Diagnosing Diseases Mango Leaves
Using a state-of-the-art convolutional neural network, specifically RESNET-50, for disease diagnosis on mango leaves is the focus of this research. The end goal is to develop a trustworthy method of mango plant disease detection using leaf image analysis. The approach used comprised gathering a sizable dataset encompassing a range of mango leaf diseases. Afterward, a classification system was developed by training the RESNET-50 model on image data. The system is able to learn extraordinarily intricate and profound visual patterns in pictures of mango leaves thanks to RESNET-50's deep and complicated architecture, which improves feature extraction. With a Test Accuracy of 99.16% and a Test Loss of only 0.4332, the results demonstrate a very reliable system. This impressive level of precision verifies that the system is capable of correctly distinguishing and categorizing mango leaf diseases. Consequently, this case demonstrates promising agricultural applications of the RESNET-50 model and offers a dependable and effective means of disease detection in mango plants. This study adds to the growing body of knowledge that can aid agricultural professionals and farmers in the early detection of disease symptoms on mango leaves, allowing for the prompt implementation of preventative measures. These findings also have broader implications, such as the potential for better agricultural productivity and management brought about by the use of comparable technologies for disease analysis in different crops.
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