基于叶子图像的芒果类型分类CNN架构

Nur Nafi’iyah, Jauharul Maknun
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引用次数: 0

摘要

在这种情况下,有必要有一个系统,可以使用机器学习或深度学习自动分类植物物种或识别植物疾病类型。植物分类系统对于不熟悉作物领域的普通人来说不是一件容易的工作,它需要专家对该领域的深入了解。本研究提出了一种基于叶片的芒果植物种类识别系统。从之前的研究中提出CNN方法的原因是CNN方法具有很好的准确率。以前对植物物种进行分类的大多数研究都使用植物的叶子。本研究的目的是提出一种基于叶片图像的芒果物种分类CNN建筑模型。基于所构建的CNN建筑模型,对尺寸为224x224的彩色芒果树叶子的输入图像进行训练。本研究共提出了4个CNN架构模型和1个迁移学习模型。根据所提出的CNN架构模型的评估测试结果,认为最佳架构模型为第三种。第三种CNN架构的参数个数为1,245,989,评估时的损失值为1,431,准确率为0.55。参数数量最多的是迁移学习InceptionV3 21,802,784,但迁移学习的准确率值最低,损失最大,分别为0.2和1.61。
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CNN Architecture for Classifying Types of Mango Based on Leaf Images
In such conditions, it is necessary to have a system that can automatically classify plant species or identify types of plant diseases using either machine learning or deep learning. The plant classification system for ordinary people who are not familiar with the field of crops is not an easy job, it requires in-depth knowledge of the field from the experts. This study proposes a system for identifying mango plant species based on leaves using the CNN method. The reason for proposing the CNN method from previous research is that the CNN method produces good accuracy. Most previous studies to classify plant species use the leaves of the plant. The purpose of this study is to propose a CNN architectural model in classifying mango species based on leaf imagery. The input image of colored mango tree leaves measuring 224x224 is trained based on the CNN architectural model that was built. There are 4 CNN architectural models proposed in the study and 1 transfer learning InceptionV4. Based on the evaluation test results of the proposed CNN architectural model, that the best architectural model is the third. The number of parameters of the third CNN architecture is 1,245,989 with loss values and accuracy during evaluation are 1,431 and 0.55. The largest number of parameters is transfer learning InceptionV3 21,802,784, but transfer learning shows the lowest accuracy value and the highest loss, namely 0.2, and 1.61.
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7
审稿时长
24 weeks
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