Rabbit breed classification using CNN / Aishah Nabila Mohd Zaid

Rabbit breed classification poses challenges due to the diverse physical characteristics and colour patterns, complicating differentiation, especially for untrained individuals. Misclassification can detrimentally affect mating, genetic selection, and rabbit health. Thus, developing an accurate clas...

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Bibliographic Details
Main Author: Mohd Zaid, Aishah Nabila
Format: Thesis
Language:English
Published: 2024
Subjects:
Online Access:https://ir.uitm.edu.my/id/eprint/95549/1/95549.pdf
https://ir.uitm.edu.my/id/eprint/95549/
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Summary:Rabbit breed classification poses challenges due to the diverse physical characteristics and colour patterns, complicating differentiation, especially for untrained individuals. Misclassification can detrimentally affect mating, genetic selection, and rabbit health. Thus, developing an accurate classification system is crucial for the breeding and farming industry. This project aims to study the CNN algorithm's efficacy in rabbit breed classification, develop a CNN-based prototype, and evaluate its accuracy. Four widely raised rabbit breeds in Malaysia—Californian, Holland Lop, Lionhead, and New Zealand—are selected for classification due to their distinct characteristics. The research methodology encompasses preliminary study, design and implementation, and evaluation phases. Literature review, knowledge acquisition, and dataset collection inform algorithm selection and dataset validation. The design and implementation phase focus on prototype development, while the evaluation phase assesses classification performance. Results demonstrate the CNN algorithm's potential for achieving high accuracy, with an average accuracy of 95%. This study underscores the CNN algorithm's viability for accurate rabbit breed identification. It concludes by recommending further research into its application in other animal classification contexts, highlighting broader implications.