实现移位学习,检测小麦叶疾病

Faisal Mashuri
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引用次数: 0

摘要

小麦是印尼人最常消费的商品之一。这种植物通常作为碳水化合物的补充或大米的替代品食用。大多数印尼人将小麦加工成面粉、面包、方便面、谷物和其他加工原料。不幸的是,小麦的需求与生产水平不相适应。阻碍小麦生产的因素之一是病虫害造成的作物歉收。小麦中常见的病害是Septoria和Stripe锈病。该病可通过颜色和叶斑来鉴别,但两种病很难区分。随着技术的快速发展,这个问题可以使用一种称为迁移学习的深度学习技术来解决。本研究的目的是对5种预训练的小麦叶片疾病诊断模型进行测试,被测试的模型分别是:InceptionV3、MobileNetV2、VGG16、ResNet101V2、DenseNet201。通过对5个预训练模型的测试和比较,InceptionV3给出了比其他模型更好的结果,计算时间很低,只有976秒,相当于16分钟,具有非常高的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IMPLEMENTASI TRANSFER LEARNING DALAM MENDETEKSI PENYAKIT PADA DAUN GANDUM
Wheat is one of the most frequently consumed commodities of Indonesian people. This plant is often consumed as an carbohydrate addition or rice substitution. Most Indonesians process the wheat for ingredients such as flour, bread, instant noodles, cereals and other processed ingredients. Unfortunately, the demand for wheat is not suitable with level of production. One of the factors that hinder wheat production is crop failure due to disease or pests. Diseases that are often found in wheat are Septoria and Stripe Rust. The disease can be identified by color and leaf spot, but it is difficult to distinguish between the two diseases. With the rapid development of technology, this problem can be solved using one of the deep learning techniques known as transfer learning. The purpose of this study was to test five pretrained models to diagnose disease in wheat leaf, the models tested were InceptionV3, MobileNetV2, VGG16, ResNet101V2, DenseNet201. The results of testing and comparing five pretrained models, InceptionV3 gives better results than other models with a low computation time of only 976 seconds or the equivalent of 16 minutes and has a very high accuracy.
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