基于卷积神经网络的植物病害分类迁移学习模型的比较评价

Naresh Pajjuri, U. Kumar, Rahisha Thottolil
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引用次数: 3

摘要

农作物病害的大范围流行影响着地方到区域范围内农产品的生产质量和数量。通常情况下,这些疾病仍然不明,给农民造成巨大痛苦,同时威胁到国家粮食安全。为了避免这一问题,采用快速可靠的方法进行疾病的早期诊断是有益的。从数码相机拍摄的图像中识别植物病害是一个活跃的研究领域。利用各种机器学习算法进行植物病害分类,以及基于深度卷积神经网络(CNN)架构的进化,进一步提高了植物病害分类的准确性。在这种情况下,一个基于计算机视觉的植物病害检测和分类方案将是非常可取的。虽然目前存在一些专门用于植物病害检测和/或分类的技术,但在实际植物数据上评估其使用和功效的系统研究在很大程度上仍未被探索。本文的目的是评估各种基于CNN的最先进的迁移学习架构,如GoogLeNet、AlexNet、VGG16和ResNet50V2模型,用于植物病害检测和分类。模型在PlantVillage数据集、New plant disease数据集和plant Pathology数据集这三个流行的公共植物病害基准数据库上进行了测试。使用精度、召回率、F1分数和总体准确率等各种验证指标来评估实验的最终结果,结果表明VGG16在三个数据集上的最高准确率分别为96.6%、98.5%和89%,优于所有其他最先进的模型。
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Comparative Evaluation of the Convolutional Neural Network based Transfer Learning Models for Classification of Plant Disease
The wide scale prevalence of diseases in agricultural crops affects both the production quality and quantity of agricultural products at local to regional scale. More often than not, the diseases remain unidentified causing huge distress to the farmers while threatening national food security. In order to circumvent this problem, early diagnosis of diseases using a fast and reliable method is beneficial. Plant disease identification from images captured by digital cameras is an area of active research. Use of various machine learning algorithms for plant disease classification and the evolution of deep convolutional neural network (CNN) based architectures have further enhanced the plant disease classification accuracy. In this context, an automated computer vision-based plant disease detection and classification scheme from plant and leaf’s photographs will be highly desirable. Although, there exist a few techniques currently used in an adhoc fashion for plant disease detection and/or classification, a systematic study to evaluate their usage and efficacy on actual plant data has largely remained unexplored.The aim of this paper is to evaluate various CNN based state-of-the-art transfer learning architectures like GoogLeNet, AlexNet, VGG16 and ResNet50V2 models for plant disease detection and classification. The models were tested on popular publicly available three plant disease benchmark database such as PlantVillage Dataset, New Plant Disease Dataset and Plant Pathology Dataset. Various validation metrics such as Precision, Recall, F1 score and overall accuracy were used to evaluate the final results of the experiments, which revealed that VGG16 rendered highest accuracy of 96.6%, 98.5% and 89% on the three dataset respectively, outperforming all other state-of-the-art models.
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