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Development of a Rice Plant Disease Classification Model in Big Data Environment

Shampa Sengupta, Abhijit Dutta, Shaimaa A. M. Abdelmohsen, Haifa A. Alyousef, Mohammad Rahimi‐Gorji

2022Bioengineering12 citationsDOIOpen Access PDF

Abstract

More than the half of the global population consume rice as their primary energy source. Therefore, this work focused on the development of a prediction model to minimize agricultural loss in the paddy field. Initially, rice plant diseases, along with their images, were captured. Then, a big data framework was used to encounter a large dataset. In this work, at first, feature extraction process is applied on the data and after that feature selection is also applied to obtain the reduced data with important features which is used as the input to the classification model. For the rice disease datasets, features based on color, shape, position, and texture are extracted from the infected rice plant images and a rough set theory-based feature selection method is used for the feature selection job. For the classification task, ensemble classification methods have been implemented in a map reduce framework for the development of the efficient disease prediction model. The results on the collected disease data show the efficiency of the proposed model.

Topics & Concepts

Feature selectionComputer scienceFeature extractionArtificial intelligenceData miningPattern recognition (psychology)Feature (linguistics)Plant diseasePopulationSelection (genetic algorithm)Field (mathematics)Big dataMachine learningMathematicsBiotechnologyLinguisticsBiologySociologyPure mathematicsPhilosophyDemographySmart Agriculture and AISpectroscopy and Chemometric AnalysesTechnology and Security Systems
Development of a Rice Plant Disease Classification Model in Big Data Environment | Litcius