Image-Based Leaf Disease Recognition Using Transfer Deep Learning with a Novel Versatile Optimization Module

IF 4.7 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC ACS Applied Electronic Materials Pub Date : 2024-05-23 DOI:10.3390/bdcc8060052
Petra Radočaj, Dorijan Radočaj, Goran Martinović
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引用次数: 0

Abstract

Due to the projected increase in food production by 70% in 2050, crops should be additionally protected from diseases and pests to ensure a sufficient food supply. Transfer deep learning approaches provide a more efficient solution than traditional methods, which are labor-intensive and struggle to effectively monitor large areas, leading to delayed disease detection. This study proposed a versatile module based on the Inception module, Mish activation function, and Batch normalization (IncMB) as a part of deep neural networks. A convolutional neural network (CNN) with transfer learning was used as the base for evaluated approaches for tomato disease detection: (1) CNNs, (2) CNNs with a support vector machine (SVM), and (3) CNNs with the proposed IncMB module. In the experiment, the public dataset PlantVillage was used, containing images of six different tomato leaf diseases. The best results were achieved by the pre-trained InceptionV3 network, which contains an IncMB module with an accuracy of 97.78%. In three out of four cases, the highest accuracy was achieved by networks containing the proposed IncMB module in comparison to evaluated CNNs. The proposed IncMB module represented an improvement in the early detection of plant diseases, providing a basis for timely leaf disease detection.
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利用带有新型多功能优化模块的传输深度学习进行基于图像的叶片病害识别
预计到 2050 年,粮食产量将增加 70%,因此应加强农作物的病虫害防治,以确保充足的粮食供应。与传统方法相比,传输深度学习方法提供了更高效的解决方案,传统方法耗费大量人力,难以有效监测大面积区域,导致疾病检测延迟。本研究提出了一种基于 Inception 模块、Mish 激活函数和批量归一化(IncMB)的通用模块,作为深度神经网络的一部分。以带有迁移学习的卷积神经网络(CNN)为基础,评估了番茄疾病检测方法:(1)CNN;(2)带有支持向量机(SVM)的 CNN;(3)带有所提议的 IncMB 模块的 CNN。实验中使用了公共数据集 PlantVillage,其中包含六种不同番茄叶病的图像。包含 IncMB 模块的预训练 InceptionV3 网络取得了最佳结果,准确率达到 97.78%。与经过评估的 CNN 相比,在四种情况中的三种情况下,包含拟议 IncMB 模块的网络获得了最高的准确率。拟议的 IncMB 模块改进了植物病害的早期检测,为及时检测叶片病害奠定了基础。
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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
期刊介绍: ACS Applied Electronic Materials is an interdisciplinary journal publishing original research covering all aspects of electronic materials. The journal is devoted to reports of new and original experimental and theoretical research of an applied nature that integrate knowledge in the areas of materials science, engineering, optics, physics, and chemistry into important applications of electronic materials. Sample research topics that span the journal's scope are inorganic, organic, ionic and polymeric materials with properties that include conducting, semiconducting, superconducting, insulating, dielectric, magnetic, optoelectronic, piezoelectric, ferroelectric and thermoelectric. Indexed/​Abstracted: Web of Science SCIE Scopus CAS INSPEC Portico
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