Abstract

Rapid and accurate grape leaf disease diagnosis is of great significance to its yield and quality of grape. In this paper, aiming at the identification of grape leaf diseases, a fast and accurate detection method based on fused deep features, extracted from a convolutional neural network (CNN), plus a support vector machine (SVM) is proposed. In the research, based on an open dataset, three types of state-of-the-art CNN networks, three kinds of deep feature fusion methods, seven species of deep feature layers, and a multi-class SVM classifier were studied. Firstly, images were resized to meet the input requirements of the CNN network; then, the deep features of the input images were extracted via the specific deep feature layer of the CNN network. Two kinds of deep features from different networks were then fused using different fusion methods to increase the effective classification feature information. Finally, a multi-class SVM classifier was trained with the fused deep features. The experimental results on the open dataset show that the fused deep features with any kind of fusion method can obtain a better classification performance than using a single type of deep feature. The direct concatenation of the Fc1000 deep feature extracted from ResNet50 and ResNet101 can achieve the best classification result compared with the other two fusion methods, and its F1 score is 99.81%. Furthermore, the SVM classifier trained using the proposed method can achieve a classification performance comparable to that of using the CNN model directly, but the training time is less than 1 s, which has an advantage over spending tens of minutes training a CNN model. The experimental results indicate that the method proposed in this paper can achieve fast and accurate identification of grape leaf diseases and meet the needs of actual agricultural production.

Highlights

  • Grape is one of the most favorite fruits in the world, which contains a variety of vitamins, carotenoids, and polyphenols which have numerous benefits for human health such as anti-cancer, anti-oxidation, and photoprotective [1,2]

  • With the development of computer vision (CV), machine learning (ML), and deep learning (DL), technology has been widely applied to crop disease detection [3,4]

  • The main contributions of this study are as follows: Agronomy 2021, 11, 2234 (1) The deep features extracted by convolutional neural network (CNN) models were adopted to train a support vector machine (SVM) classifier for the classification of grape leaf disease

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Summary

Introduction

Grape is one of the most favorite fruits in the world, which contains a variety of vitamins, carotenoids, and polyphenols which have numerous benefits for human health such as anti-cancer, anti-oxidation, and photoprotective [1,2]. The above research shows that using the deep features extracted using a CNN model to train the SVM classifier can obtain classification performance that is not inferior to those applying a deep network directly. To solve the above-mentioned problem in the current research, a method to train an SVM classifier with fused deep features is proposed to further improve the diagnosis performance of grape leaf disease. The main contributions of this study are as follows: different networks can make the SVM classifier learn more features and improve the classification performance. (1) The deep features extracted by CNN models were adopted to train a support vector machine (SVM) classifier for the classification of grape leaf disease.

Methods
Network Architecture and Deep Features Layers
AlexNet
GoogLeNet
ResNet
Fusion of Deep Features by Canonical Correlation Analysis
Proposed Methodology
Experiment Setup
The Evaluation Index
Performance Analysis Based on Single Type of Deep Feature
Performance of Direct Concatenation Fusion Method
Performance of CCA Sum Fusion Method
Performance of CCA Concatenation Fusion Method
Performance Comparison with Using CNN Network Directly
Performance Comparison with Some Other Studies
Findings
Conclusions and Future Works
Full Text
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