AUTOMATED CLASSIFICATION OF HAIR CARE PLANTS USING GEOMETRICAL AND TEXTURAL FEATURES FROM LEAF IMAGES: A PATTERN RECOGNITION BASED APPROACH
DOI:
https://doi.org/10.57041/vol68iss4pp%25pKeywords:
Geometrical Features, Image Processing, Leaf Classification, Leaf Identification and Textural FeaturesAbstract
Automated classification plays a vital role in content based image retrieval systems in addition to many more. Inter-class similarity and intra-class dissimilarity is the main challenge posed by leaf classification. This research work proposed a plant classification system using textural and geometrical features from leaf images. Six classification models, among which three were ensemble methods, were considered to evaluate the accuracy of proposed technique. Train and test strategy was adopted to evaluate the performance of different classifiers. Experimental results showed that the proposed technique outperformed the state of the art. Moreover, it was observed that textural features outperformed geometrical features. The best accuracy achieved with textural features was 100%, whereas it was 98.8% when geometrical features were used. SVM, IBk and Random Tree remained the best classifiers in leaf identification using both types of features. Hence, textural and geometrical features couldbe effectively used for plant classification.

