Houseplant leaf classification system based on deep learning algorithms

Hersh M. Hama, Taib Sh. Abdulsamad, Saman M. Omer
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Abstract

Botanical experts are typically relied upon to classify houseplants since even subtle differences in characteristics such as leaves can distinguish one species from another. Therefore, an automated system for recognizing houseplant leaves with accuracy and reliability becomes a valuable asset for the identification of indoor plant species. In this paper, a houseplant leaf classification system utilizing deep learning algorithms is proposed, which has been improved to effectively classify and identify a variety of houseplant leaf types. The system uses the ResNet-50 architecture based on convolutional neural network to analyze features of the leaf images and extract relevant information for classification. In addition, this work presents a newly constructed local dataset consisting of 2500 images to classify species of houseplant leaves. The dataset includes ten types of houseplant leaves that are suitable for cultivation in various climates at home. The dataset was augmented using data augmentation algorithms to increase its size and reduce overfitting. The developed system was training and testing using a local dataset. To evaluate the improved model, comparative experiments were conducted utilizing pre-trained models (original ResNet-50 and MobileNet_v2). The improved model revealed recognition accuracy of 99% with the augmented dataset and 98.60% without the augmentation, affirming its effectiveness. The improved model could potentially be used in various fields, including horticulture, plant pathology, and environmental monitoring to identify plant species.
基于深度学习算法的植物叶片分类系统
人们通常依靠植物学专家对室内植物进行分类,因为即使是叶片等特征上的细微差别,也能将一个物种与另一个物种区分开来。因此,一个能准确可靠地识别家庭盆栽植物叶子的自动化系统成为识别室内植物物种的宝贵财富。本文提出了一种利用深度学习算法的盆栽植物叶片分类系统,经过改进后,该系统能有效地分类和识别各种盆栽植物的叶片类型。该系统采用基于卷积神经网络的 ResNet-50 架构来分析叶片图像的特征,并提取相关信息进行分类。此外,这项工作还提出了一个新构建的本地数据集,该数据集由 2500 张图像组成,用于对家庭植物叶片的种类进行分类。该数据集包括十种适合在不同气候条件下栽培的家庭植物叶片。该数据集使用数据增强算法进行增强,以增加其规模并减少过拟合。开发的系统使用本地数据集进行训练和测试。为了评估改进后的模型,利用预先训练好的模型(原始 ResNet-50 和 MobileNet_v2)进行了对比实验。使用增强数据集后,改进模型的识别准确率为 99%,而不使用增强数据集时为 98.60%,这肯定了其有效性。改进后的模型可用于园艺、植物病理学和环境监测等多个领域,以识别植物物种。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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