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A Comparison Between SVM and K-NN for classification of Plant Diseases
Author(s) -
Sarah Saadoon Jasim,
Ali Al-Taei
Publication year - 2018
Publication title -
diyala journal for pure science
Language(s) - English
Resource type - Journals
eISSN - 2518-9255
pISSN - 2222-8373
DOI - 10.24237/djps.1402.383b
Subject(s) - support vector machine , pattern recognition (psychology) , artificial intelligence , computer science
Vegetable crops differ in size, shape, and color and which its suffer from this many leaf batches according to a particular reason. As a result of the plant, pathogens happen for Leaf batches. In agriculture whole fructification, it is essential to learn the origin of plant disease bundles early to be prepared for suitable timing control. In this regard, uses Support Vector Machine (SVM) and KNearest Neighbor to classify the plant's symptoms according to their appropriate classifications. These typesare (YS) Yellow Spotted class, (WS) White Spottedclass, (RS) Red Spotted class, and (D) tarnishedclass. Results obtained using SVM algorithm was compared with results obtained by a K-NN algorithm. Specifically, the overall accuracy of SVM model is about 88.17% and 85.61% for the k -NN model (with k = 1).

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