基于深度学习优化器的植物分类性能比较研究

Sai Kumar T S, Prabalakshmi A, A. K, S. Alagammal
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引用次数: 0

摘要

最近,许多深度学习架构已被用于各种植物的识别和分类。本研究主要对农村地区可获得的药用植物进行分类。为此,通过实现迁移学习概念,选择了针对ImageNet数据集进行训练的六个知名的预训练卷积神经网络(CNN),即Dense121、InceptionV3、VGG16、Xception、VGG19和MobileNet。这些模型使用预训练的权重对农村药用植物(RMP)数据集进行检验,该数据集使用8种不同类别的药用植物创建,总计16000张图像。通过两个最先进的深度学习优化器,即随机梯度下降(SGD)和Adam,这些模型的性能得到了改善。这些模型是使用带有TensorFlow后端的Keras进行训练的。对这些模型进行了比较评价,以确定达到最佳分类的模型。研究表明,对于RMP数据集,使用SGD优化器提高训练性能的MobileNet架构是最适合药用植物分类的模型,从而证明了本研究的新颖性。因此,所提出的模型可用于传统医学从业者对药用植物的识别和分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comparative Study on Plant Classification Performance using Deep Learning Optimizers
Recently, many Deep Learning architectures have been employed in the identification and classification of a wide variety of plants. This research mainly focuses on classifying the medicinal plants that are available in rural areas. To do so, six well-known pre-trained Convolutional Neural Networks (CNN) namely Dense121, InceptionV3, VGG16, Xception, VGG19, and MobileNet, that were trained for the ImageNet dataset, were chosen by implementing Transfer Learning concept. These models were examined with their pre-trained weights for the Rural Medicinal Plant (RMP) dataset that was created using 8 different classes of medicinal plants that sum up to a total of 16000 images. The performance of these models was improved by training through two state-of-the-art Deep Learning optimizers namely, Stochastic Gradient Descent (SGD) and Adam. These models were trained using Keras with a TensorFlow backend. A comparative evaluation was made for these models to identify the model that attains the best classification. The research concluded that for RMP dataset, the MobileNet architecture, in which the training performance was improved with the SGD optimizer is the best suited model to classify medicinal plants and thus proves the novelty of this research. Therefore, the proposed model can be used by traditional medicine practitioners for the identification and classification of medicinal plants.
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