EXPLORING THE EFFECTIVENESS OF DATA AUGMENTATION TECHNIQUES IN MACHINE LEARNING AND DEEP LEARNING: APPLICATION TO IMAGE RECOGNITION

  • Dao Thi Le Thuy Faculty of Information Technology, University of Transport and Communications
  • Chu Ba Thanh Faculty of Information Technology, Hung Yen University of Technology and Education
Keywords: Data Augmentation, Image Recognition, Deep Learning, Generative Adversarial Networks (GANs)

Abstract

In this study, we explore data augmentation techniques aimed at enhancing the accuracy of image recognition models in machine learning and deep learning. By applying methods such as rotation, scaling, flipping, and advanced techniques like GAN-based augmentation, we address challenges related to data scarcity and imbalance. Experimental results on the Dogs vs. Cats dataset show significant improvements in model performance, with combined data augmentation techniques achieving the highest accuracy of 90.83%. This study underscores the critical role of data augmentation in improving model robustness and generalization, especially in scenarios with limited data. We also discuss the implications of these findings for future research in the field of image recognition.

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Published
2024-06-05
How to Cite
Dao Thi Le Thuy, & Chu Ba Thanh. (2024). EXPLORING THE EFFECTIVENESS OF DATA AUGMENTATION TECHNIQUES IN MACHINE LEARNING AND DEEP LEARNING: APPLICATION TO IMAGE RECOGNITION. UTEHY Journal of Applied Science and Technology, 42, 45-51. Retrieved from http://jst.utehy.edu.vn/index.php/jst/article/view/691