Dataset of Selected Medicinal Plant Species of the Genus Brachylaena: A Comparative Application of Deep Learning Models for Plant Leaf Recognition

Avuya Deyi, Arnaud Nguembang Fadja, Eleonora Deborah Goosen, Xavier Siwe Noundou
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Abstract

Since several active pharmaceutical ingredients are sourced from medicinal plants, identifying and classifying these plants are generally a valuable and essential task during the drug manufacturing process. For many years, identifying and classifying those plants have been exclusively done by experts in the domain, such as botanists and herbarium curators. Recently, powerful computer vision technologies, using deep learning or deep artificial neural networks, have been developed for classifying or identifying objects using images. A convolutional neural network is a deep learning architecture that outperforms previous state-of-the-art approaches in image classification and object detection based on its efficient feature extraction of images. This study investigated several pre-trained convolutional neural networks for identifying and classifying leaves of three species of the genus Brachylaena. The three species considered were Brachylaena discolor, Brachylaena ilicifolia, and Brachylaena elliptica. All three species are used medicinally by people in South Africa. We trained and evaluated different deep convolutional neural networks from 1259 labeled images of those plant species (at least 400 for each species) split into training, evaluation, and test sets. The best model provided a 98.26% accuracy using cross-validation with a confidence interval of ±2.16%.
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短叶草属药用植物选种数据集:深度学习模型在植物叶片识别中的比较应用
由于一些有效的药物成分来源于药用植物,因此在药物制造过程中,对这些植物进行识别和分类通常是一项有价值和必要的任务。多年来,这些植物的鉴定和分类都是由该领域的专家,如植物学家和植物标本馆馆长来完成的。最近,使用深度学习或深度人工神经网络的强大计算机视觉技术已经被开发出来,用于使用图像对物体进行分类或识别。卷积神经网络是一种深度学习架构,它基于对图像的有效特征提取,在图像分类和目标检测方面优于以前最先进的方法。研究了几种预训练的卷积神经网络对三种短叶草属植物叶片的识别和分类。被考虑的三个物种是变色短叶藻(Brachylaena discolor)、短叶藻(Brachylaena ilicifolia)和椭圆短叶藻(Brachylaena elliptica)。这三种植物都被南非人用作药用。我们从1259张这些植物物种的标记图像(每个物种至少400张)中训练和评估不同的深度卷积神经网络,这些图像被分为训练集、评估集和测试集。交叉验证的最佳模型准确率为98.26%,置信区间为±2.16%。
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来源期刊
Journal of Computer Science
Journal of Computer Science Computer Science-Computer Networks and Communications
CiteScore
1.70
自引率
0.00%
发文量
92
期刊介绍: Journal of Computer Science is aimed to publish research articles on theoretical foundations of information and computation, and of practical techniques for their implementation and application in computer systems. JCS updated twelve times a year and is a peer reviewed journal covers the latest and most compelling research of the time.
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