基于图像的油棕叶病卷积神经网络检测

Q4 Computer Science
Jia Heng Ong, P. Ong, Kiow Lee Woon
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引用次数: 1

摘要

多年来,人们对计算机视觉和机器学习在植物病害检测中的结合进行了大量的研究。然而,这些传统的机器学习方法往往需要从整个叶片区域中对感染区域进行轮廓分割,并人工提取不同的判别特征,然后才能开发分类模型。本研究利用深度学习模型,即AlexNet卷积神经网络(CNN)和AlexNet与支持向量机(AlexNet- svm)的结合,克服了特征表示手工制作的局限性,实现了油棕叶病的识别。在模型训练之前,收集健康和感染叶片样本的图像,调整大小并重新命名。这些图像直接用于拟合分类模型,不需要像模型那样进行分割和特征提取,也不需要像传统的机器学习方法那样进行分割和特征提取。然后确定AlexNet CNN和AlexNet- svm模型的最优架构,并将其应用于油棕叶病的识别。对比研究表明,AlexNet CNN模型的整体性能优于基于AlexNet- svm的分类器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IMAGE-BASED OIL PALM LEAVES DISEASE DETECTION USING CONVOLUTIONAL NEURAL NETWORK
Over the years, numerous studies have been conducted on the integration of computer vision and machine learning in plant disease detection. However, these conventional machine learning methods often require the contour segmentation of the infected region from the entire leaf region and the manual extraction of different discriminative features before the classification models can be developed. In this study, deep learning models, specifically, the AlexNet convolutional neural network (CNN) and the combination of AlexNet and support vector machine (AlexNet-SVM), which overcome the limitation of handcrafting of feature representation were implemented for oil palm leaf disease identification. The images of healthy and infected leaf samples were collected, resized, and renamed before the model training. These images were directly used to fit the classification models, without the need for segmentation and feature extraction as in models, without the need for segmentation and feature extraction as in the conventional machine learning methods. The optimal architecture of AlexNet CNN and AlexNet-SVM models were then determined and subsequently applied for the oil palm leaf disease identification.Comparative studies showed that the overall performance of the AlexNet CNN model outperformed AlexNet-SVM-based classifier.
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来源期刊
CiteScore
0.70
自引率
0.00%
发文量
95
期刊介绍: IJICT is a refereed journal in the field of information and communication technology (ICT), providing an international forum for professionals, engineers and researchers. IJICT reports the new paradigms in this emerging field of technology and envisions the future developments in the frontier areas. The journal addresses issues for the vertical and horizontal applications in this area. Topics covered include: -Information theory/coding- Information/IT/network security, standards, applications- Internet/web based systems/products- Data mining/warehousing- Network planning, design, administration- Sensor/ad hoc networks- Human-computer intelligent interaction, AI- Computational linguistics, digital speech- Distributed/cooperative media- Interactive communication media/content- Social interaction, mobile communications- Signal representation/processing, image processing- Virtual reality, cyber law, e-governance- Microprocessor interfacing, hardware design- Control of industrial processes, ERP/CRM/SCM
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