Abstract
Agriculture, with its allied sectors, is the largest source of livelihoods in India. Diseases in plants cause a substantial decrease in quality as well as quantity of crops or agricultural products. Detection of these diseases is the solution to prevent losses in the harvest and amount of agricultural products. The main objective of the proposed method is to develop a technique to identify leaf disease in tomato plant by improving the classification accuracy and reducing computational time. The novelty of the work is fusion of multiple features in order to improve classification accuracy. Color histograms, Hu Moments, Haralick and Local Binary Pattern features are used for training and testing purpose. Rrandom forest and decision tree classification algorithms are uses for leaf disease classification. Based on the experiments conducted, it showed that the random forest classifier is more accurate than decision tree classifier. The classification accuracy is 90% for decision tree classifier and 94% for random forest classifier respectively.
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Basavaiah, J., Arlene Anthony, A. Tomato Leaf Disease Classification using Multiple Feature Extraction Techniques. Wireless Pers Commun 115, 633–651 (2020). https://doi.org/10.1007/s11277-020-07590-x
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DOI: https://doi.org/10.1007/s11277-020-07590-x