Abstract

Various plant diseases are major threats to agriculture. For timely control of different plant diseases in effective manner, automated identification of diseases are highly beneficial. So far, different techniques have been used to identify the diseases in plants. Deep learning is among the most widely used techniques in recent times due to its impressive results. In this work, we have proposed two methods namely shallow VGG with RF and shallow VGG with Xgboost to identify the diseases. The proposed model is compared with other hand-crafted and deep learning-based approaches. The experiments are carried on three different plants namely corn, potato, and tomato. The considered diseases in corns are Blight, Common rust, and Gray leaf spot, diseases in potatoes are early blight and late blight, and tomato diseases are bacterial spot, early blight, and late blight. The result shows that our implemented shallow VGG with Xgboost model outperforms different deep learning models in terms of accuracy, precision, recall, f1-score, and specificity. Shallow Visual Geometric Group (VGG) with Xgboost gives the highest accuracy rate of 94.47% in corn, 98.74% in potato, and 93.91% in the tomato dataset. The models are also tested with field images of potato, corn, and tomato. Even in field image the average accuracy obtained using shallow VGG with Xgboost are 94.22%, 97.36%, and 93.14%, respectively.

Highlights

  • Diagnosis of plant diseases using the naked eye through observation of symptoms on plant leaves requires expertise and continuous monitoring

  • We found that shallow Visual Geometric Group (VGG) network with machine learning classifier performs well and shallow VGG with Xgboost classifier outperforms original VGG19

  • False Positive (FP) is the number of wrongly classified images, whereas True Negative (TN) is the sum of the correctly classified images in all other categories and False Negative (FN) is the number of misclassified images from the relevant category

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Summary

Introduction

Diagnosis of plant diseases using the naked eye through observation of symptoms on plant leaves requires expertise and continuous monitoring. As there is a large number of cultivated crops, even experienced pathologists and agronomists often fail to identify specific diseases [1]. Identification of diseases is an important issue in agriculture. If they are not identified in proper time there will be chances of qualitative and quantitative crop loss. Manual identification of diseases will be timeconsuming and expensive task. Automated identification of plant diseases has a great impact in qualitative production. The diseases are identified by visualizing the symptoms on the leaf [2,3]. The main reason for considering the leaves of the plant to identify the diseases is that most of the disease symptoms appear in the leaves [5,6]

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