Please use this identifier to cite or link to this item: http://umt-ir.umt.edu.my:8080/handle/123456789/5883
Title: Feature Extraction and Classification for Multiple Species of Gyrodactylus Ectoparasite
Authors: Rozniza Ali
Amir Hussain
Mustafa Man
Keywords: marginal hooks
feature extraction
gyrodactylus
machine learning
Issue Date: 3-Mar-2015
Publisher: TELKOMNIKA Indonesian Journal of Electrical Engineering
Abstract: Active Shape Models (ASM) are applied to the attachment hooks of several species of Gyrodactylus, including the notifiable pathogen G. salaris, to assign each species to its true species type. ASM is used as a feature extraction tool to select information from hook images that can be used as input data into trained classifiers. Linear (i.e. LDA and K-NN) and non-linear (i.e. MLP and SVM) models are used to classify Gyrodactylus species. Species of Gyrodactylus, ectoparasitic monogenetic flukes of fish, are difficult to discriminate and identify according to morphology alone and their speciation currently requires taxonomic expertise. The current exercise sets out to confidently classify species, which in this example includes a species which is a notifiable pathogen of Atlantic salmon, to their true class with a high degree of accuracy. The findings from the current exercise demonstrates that import of ASM data into a MLP classifier, outperforms several other methods of classification (i.e. LDA, K-NN and SVM) that were assessed, with an average classification accuracy of 98.72%.
URI: http://hdl.handle.net/123456789/5883
Appears in Collections:Journal Articles

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