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PolygoNet: Leveraging Simplified Polygonal Representation for Effective Image Classification

Salim Khazem
Jeremy Fix
Cédric Pradalier
Abstract

Deep learning models have achieved significant success in various image related tasks. However, they often encounter challenges related to computational complexity and overfitting. In this paper, we propose an efficient approach that leverages polygonal representations of images using dominant points or contour coordinates. By transforming input images into these compact forms, our method significantly reduces computational requirements, accelerates training, and conserves resources making it suitable for real time and resource constrained applications. These representations inherently capture essential image features while filtering noise, providing a natural regularization effect that mitigates overfitting. The resulting lightweight models achieve performance comparable to state of the art methods using full resolution images while enabling deployment on edge devices. Extensive experiments on benchmark datasets validate the effectiveness of our approach in reducing complexity, improving generalization, and facilitating edge computing applications. This work demonstrates the potential of polygonal representations in advancing efficient and scalable deep learning solutions for real world scenarios. The code for the experiments of the paper is provided inthis https URL.

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@article{khazem2025_2504.01214,
  title={ PolygoNet: Leveraging Simplified Polygonal Representation for Effective Image Classification },
  author={ Salim Khazem and Jeremy Fix and Cédric Pradalier },
  journal={arXiv preprint arXiv:2504.01214},
  year={ 2025 }
}
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