A COMPARATIVE STUDY OF CNN-BASED AND TRADITIONAL MULTI-FOCUS IMAGE FUSION TECHNIQUES WITH THE INTRODUCTION OF A NOVEL HYBRID MODEL

Authors

  • Muhammad Abdullah Irfan Khan Department of computer science and information technology, Superior University
  • Muhammad Ahmad Department of computer science and information technology, Superior University
  • Asim Amin Department of computer science and information technology, The university of Chenab
  • Syed Hammad Department of computer science and information technology, The university of Chenab
  • Dr Amna Khan Department of computer science and information technology, The university of Hafr AlBatin
  • Noor Fatima Department of computer science and information technology, Superior University

DOI:

https://doi.org/10.63878/cjssr.v3i4.1462

Abstract

This paper provides an extensive review of multi-focus image fusion techniques, highlighting recent advancements in transforming domain methods, deep learning approaches and hybrid strategies. The proposed framework combines classical multiscale decompositions such as Discrete Wavelet Transform (DWT) and Laplacian Pyramid with convolutional neural networks (CNNs) for enhanced refinement, aiming to capture intricate structural and perceptual details for superior fusion quality. Experimental evaluations reveal that hybrid models consistently outperform traditional methods in both visual fidelity and objective metrics. Despite these improvements, challenges remain, including real-time processing limitations, robustness under diverse imaging conditions and the absence of standardized benchmarks. Future research should focus on optimizing computational efficiency and developing adaptive fusion frameworks capable of addressing varied real-world scenarios.

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Published

2025-10-28

How to Cite

A COMPARATIVE STUDY OF CNN-BASED AND TRADITIONAL MULTI-FOCUS IMAGE FUSION TECHNIQUES WITH THE INTRODUCTION OF A NOVEL HYBRID MODEL. (2025). Contemporary Journal of Social Science Review, 3(4), 1034-1040. https://doi.org/10.63878/cjssr.v3i4.1462