Abstract

Analysis of the symptoms of rose leaves can identify up to 15 different diseases. This research aims to develop Convolutional Neural Network models for classifying the diseases on rose leaves using hybrid deep learning techniques with Support Vector Machine (SVM). The developed models were based on the VGG16 architecture and early or late fusion techniques were applied to concatenate the output from a fully connected layer. The results showed that the developed models based on early fusion performed better than the developed models on either late fusion or VGG16 alone. In addition, it was found that the models using the SVM classifier had better efficiency in classifying the diseases appearing on rose leaves than the models using the softmax function classifier. In particular, a hybrid deep learning model based on early fusion and SVM, which applied the categorical hinge loss function, yielded a validation accuracy of 88.33% and a validation loss of 0.0679, which were higher than the ones of the other models. Moreover, this model was evaluated by 10-fold cross-validation with 90.26% accuracy, 90.59% precision, 92.44% recall, and 91.50% F1-score for disease classification on rose leaves.

Highlights

  • Roses are widely produced and exported globally

  • The results showed that the models developed with the early fusion technique performed better than late fusion and Visual Geometry Group16 (VGG16) models

  • This research developed 12 models for classifying rose diseases from the symptoms that appear on the rose leaves using a Convolutional Neural Network (CNN) model based on VGG16 architecture and image processing

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Summary

Introduction

Roses are widely produced and exported globally. In 2019, the export value of roses was more than 175 million US dollars. The top five countries with the highest export rankings are Netherlands, Denmark, Uganda, Germany, and Canada [1]. The leaves are a source of various infectious disease symptoms. The authors in [7] classified 4 rose leaf diseases using machine learning with with at least 94% accuracy. In addition to machine learning, other methods such as deep learning and neural networks are applied to recognize and classify plant diseases. The author in [8] developed a Convolutional Neural Network (CNN) model, which applied MobileNet and transfer learning for rose disease classification. Over 30 and at least 15 rose diseases can be observed on the leaves [2]

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