Abstract

This paper presents a new and powerful approach for detecting and classifying leaf diseases for plant diagnosis with high accuracy. The main contribution of this paper is that a hybrid approach is proposed by using the combination of Partial Differential Equations (PDE) based image decomposition, segmentation, feature extraction, features selection and classification aiming to improve the classification accuracy and provide an excellent diagnosis. The TV-L1 Total variation model is adopted to separate the original image into texture and object components. Segmentation will be done only on the object component. Then texture, color, vein and shape features are extracted and merged in a feature vector using the codebook method. Moreover, features are selected by the RelieF feature selection algorithm to keep only relevant ones. In the classification, only selected features will be used and passed to the Multiclass Support Vector Machine algorithm SVM. The proposed approach is implemented and tested on the PV Plant Village dataset and provided a good and greater classification accuracy compared with the existing approaches from the literature. The obtained results proved that the use of PDE influences on the segmentation, which in turn, allowed us to identify correctly the leaves and provide new and optimal features, those features improves the classification accuracy rate to 95.9%.

Highlights

  • Many countries like Morocco depend very much on agriculture

  • We suggest a pretreatment that uses an image decomposition model based on the Partial Differential Equations (PDE) model to separate our input images were collected from Plant Village Dataset that covers 6215 images classified into 15 subsets

  • The use of PDE-based TV-L1 model allows us to isolate the object from the texture which makes the segmentation step more reliable

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Summary

Introduction

Many countries like Morocco depend very much on agriculture Such a country like others must increase its production to meet the enormous demands. Diseases are the fearsome enemy of this agricultural progression and can have a direct impact on the quality and quantity of plant foods. These diseases often affect plants and are defined by professionals as anything that disturbs the natural behavior of plants and prevents sufficient production (UNL, 2019). The protection of crops against plant diseases has a vital role and has to play in meeting the growing demand for food quality and quantity (Strange and Scott, 2005). To help farmers, computer processing and machine learning can be utilized to develop a robust classification system that

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