Title Integration of image decomposition methods and CNN for image classification
Authors Ismayilov, Mahammad ; Čalnerytė, Dalia
DOI 10.15388/LMITT.2025.6
Full Text Download
Is Part of Konferencijos „Lietuvos magistrantų informatikos ir IT tyrimai“ darbai, 2025 m. gegužės 13 d... Vilnius. 2025, p. 45-54.. ISSN 2783-784X
Keywords [eng] Convolutional Neural Network (CNN) ; Haar Wavelet Decomposition ; Image Classification ; Image Decomposition ; MNIST Dataset
Abstract [eng] This study explores integrating Haar wavelet decomposition techniques with convolutional neural networks for image classification on the MNIST dataset. The research demonstrates that without losing significant accuracy by applying the 1-level, 2-level, and 3-level decomposition techniques, the model can reduce the dimensionality and the number of parameters required by the convolutional neural network model. During the training, the 1-level Haar CNN results achieved optimal performance, demonstrating competitive accuracy and computational efficiency compared to the baseline CNN model. This approach highlights the potential of wavelet decomposition techniques to enhance CNN performance with limited computational resources.
Published Vilnius
Type Conference paper
Language English
Publication date 2025
CC license CC license description