This paper presents the first step towards looking for an advanced solution of image classification using distinct Classifiers in the Orange Data Mining Tool. The objective of the paper is to decide the ability of distinct classifiers for flowers image classification involving a small sample; Deep learning models are used to calculate a feature vector for every image of the Iris flower database. The used classifiers involved logistic regression, Neural Network, AdaBoost, Support Vector Machine, Random Forest and K-NN. The result indicates that the Logistic Regression, Neural Network, AdaBoost classifiers perform best in classifying a small sample of Iris flower images, and SVM and Random Forest classifiers perform less classification accuracy then above classifiers while K-NN performs worst with the lowest classification accuracy.
CITATION STYLE
Sajwan, V., & Ranjan, R. (2019). Classifying flowers images by using different classifiers in orange. International Journal of Engineering and Advanced Technology, 8(6 Special Issue 3), 1057–1061. https://doi.org/10.35940/ijeat.F1334.0986S319
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