Litcius/Paper detail

Detection of Rice Disease Using Bayes’ Classifier and Minimum Distance Classifier

Vikas Sharma, Aftab Ahmad Mir, Abid Sarwr

2020Journal of Multimedia Information System30 citationsDOIOpen Access PDF

Abstract

Rice (Oryza Sativa) is an important source of food for the people of our country, even though of world also .It is also considered as the staple food of our country and we know agriculture is the main source country’s economy, hence the crop of Rice plays a vital role over it. For increasing the growth and production of rice crop, ground-breaking technique for the detection of any type of disease occurring in rice can be detected and categorization of rice crop diseases has been proposed in this paper. In this research paper, we perform comparison between two classifiers namely MDC and Bayes’ classifiers Survey over different digital image processing techniques has been done for the detection of disease in rice crops. The proposed technique involves the samples of 200 digital images of diseased rice leaf images of five different types of rice crop diseases. The overall accuracy that we achieved by using Bayes’ Classifiers and MDC are 69.358 percent and 81.06 percent respectively.

Topics & Concepts

Naive Bayes classifierStaple foodClassifier (UML)Oryza sativaBayes' theoremArtificial intelligenceAgricultureCategorizationCropPlant diseaseMachine learningComputer sciencePattern recognition (psychology)MathematicsAgronomyBiotechnologyGeographyBiologySupport vector machineBayesian probabilityBiochemistryGeneArchaeologySmart Agriculture and AISpectroscopy and Chemometric Analyses