A comparative study of Machine Learning-based classification of Tomato fungal diseases: Application of GLCM texture features
Chimango Nyasulu,
Awa Diattara,
Assitan Traore,
Cheikh Ba,
Papa Madiallacké Diedhiou,
Yakhya Sy,
Hind Raki,
Diego Hernán Peluffo-Ordóñez
Affiliations
Chimango Nyasulu
LANI (Laboratoire d'Analyse Numérique et Informatique), University of Gaston Berger, BP:234, Saint-Louis, 32000, Saint-Louis, Senegal; College of Computing, Mohammed VI Polytechnic University, Lot 660, Hay Moulay Rachid, Ben Guerir, 43150, Ben Guerir, Morocco; Corresponding author at: LANI (Laboratoire d'Analyse Numérique et Informatique), University of Gaston Berger, BP:234, Saint-Louis, 32000, Saint-Louis, Senegal.
Awa Diattara
LANI (Laboratoire d'Analyse Numérique et Informatique), University of Gaston Berger, BP:234, Saint-Louis, 32000, Saint-Louis, Senegal
Assitan Traore
Business & Decision, Grenoble, 38000, Grenoble, France
Cheikh Ba
LANI (Laboratoire d'Analyse Numérique et Informatique), University of Gaston Berger, BP:234, Saint-Louis, 32000, Saint-Louis, Senegal
Papa Madiallacké Diedhiou
UFR des Sciences Agronomiques d'Aquaculture et des Technologies Alimentaires, University of Gaston Berger, BP:234, Saint-Louis, 32000, Saint-Louis, Senegal
Yakhya Sy
UFR des Sciences Agronomiques d'Aquaculture et des Technologies Alimentaires, University of Gaston Berger, BP:234, Saint-Louis, 32000, Saint-Louis, Senegal
Hind Raki
College of Computing, Mohammed VI Polytechnic University, Lot 660, Hay Moulay Rachid, Ben Guerir, 43150, Ben Guerir, Morocco; Faculty of Engineering, Corporación Universitaria Autónoma de Nariño, Pasto, 520001, Nariño, Colombia
Diego Hernán Peluffo-Ordóñez
College of Computing, Mohammed VI Polytechnic University, Lot 660, Hay Moulay Rachid, Ben Guerir, 43150, Ben Guerir, Morocco; Faculty of Engineering, Corporación Universitaria Autónoma de Nariño, Pasto, 520001, Nariño, Colombia; SDAS Research Group, Lot 660, Hay Moulay Rachid, Ben Guerir, 43150, Ben Guerir, Morocco
Globally, agriculture remains an important source of food and economic development. Due to various plant diseases, farmers continue to suffer huge yield losses in both quality and quantity. In this study, we explored the potential of using Artificial Neural Networks, K-Nearest Neighbors, Random Forest, and Support Vector Machine to classify tomato fungal leaf diseases: Alternaria, Curvularia, Helminthosporium, and Lasiodiplodi based on Gray Level Co-occurrence Matrix texture features. Small differences between symptoms of these diseases make it difficult to use the naked eye to obtain better results in detecting and distinguishing these diseases. The Artificial Neural Network outperformed other classifiers with an overall accuracy of 94% and average scores of 93.6% for Precision, 93.8% for Recall, and 93.8% for F1-score. Generally, the models confused samples originally belonging to Helminthosporium with Curvularia. The extracted texture features show great potential to classify the different tomato leaf fungal diseases. The results of this study show that texture characteristics of the Gray Level Co-occurrence Matrix play a critical role in the establishment of tomato leaf disease classification systems and can facilitate the implementation of preventive measures by farmers, resulting in enhanced yield quality and quantity.