Authors: Denčić, Dušan
Milosavljević, Nataša
Davidović, Tatjana 
Affiliations: Computer Science 
Mathematical Institute of the Serbian Academy of Sciences and Arts 
Title: Shape-Based Image Classification using Hu and Zernike Moments with Bee Colony Optimization for Tuning SVM Parameters
First page: 30
Last page: 35
Related Publication(s): Symposium Proceedings
Conference: SYM-OP-IS 2025 Palić, 7–10 September 2025.
Issue Date: 2025
Rank: M33
ISBN: 978-86-7680-494-8
URL: https://www.symopis2025.fon.bg.ac.rs/download/Conference%20Proceedings%20SymOpIs%202025.pdf
Abstract: 
In this paper, we propose a hybrid approach for image classification that combines invariant
shape descriptors with metaheuristic hyperparameter tuning. Specifically, Hu and Zernike moments are used
to represent geometric and structural properties of objects within images, while a Support Vector Machine
(SVM) is employed as the base classifier. To optimize the performance of the SVM, we integrate the Bee
Colony Optimization (BCO) algorithm, which efficiently searches for the optimal combination of
hyperparameters CCC and γ. Experimental results on publicly available Fruit and Cotton image datasets
from Kaggle show that the proposed system significantly improves the classification performance,
particularly in class-imbalanced scenarios. The application of BCO resulted in a stable solution with a
weighted F1-score of 0.7933, demonstrating both convergence efficiency and robustness. This framework is
adaptable to a wide range of image recognition tasks where shape plays a dominant role.
Keywords: computer vision | object segmentation | invariant shape descriptors | hyperparameter selection | metaheuristics
Publisher: Belgrade : University, Faculty of organizational sciences

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