Artificial Intelligence Techniques for Image Dehazing: A Review

Year : 2024 | Volume :01 | Issue : 02 | Page : 26-30
By

Gobinda Bauri

Arun Kumar Jhapate

Ritu Shrivastava

  1. Research Scholar Department of Computer Science and Enginnering, Sagar Institute of Research & Technology, Bhopal Madhya Pradesh India
  2. Assistant Professor Department of Computer Science and Enginnering, Sagar Institute of Research & Technology, Bhopal Madhya Pradesh India
  3. Associate Professor Department of Computer Science and Enginnering, Sagar Institute of Research & Technology, Bhopal Madhya Pradesh India

Abstract

This review explores the application of artificial intelligence (AI) techniques for image dehazing, addressing the pervasive challenge of enhancing image quality in hazy or foggy conditions. Traditional dehazing methods and their role as a foundation for AI-based approaches are discussed. Deep learning-based methods, including single-image and multi-image dehazing, are examined, highlighting their strengths and limitations. Data-driven approaches, leveraging large-scale datasets and domain adaptation, are also investigated. Furthermore, the review outlines the challenges in real-time processing, robustness, explainability, and real-world deployment of AI-based dehazing solutions. As AI technology advances, it is expected that image dehazing will find practical applications across various domains, making it essential to overcome the existing challenges to fully unlock its potential.

Keywords: Artificial Intelligence, Dehazing, Image, Blur, Deep learning, Multi-Scale

[This article belongs to International Journal of Mechanical Dynamics and Systems Analysis(ijmdsa)]

How to cite this article: Gobinda Bauri, Arun Kumar Jhapate, Ritu Shrivastava. Artificial Intelligence Techniques for Image Dehazing: A Review. International Journal of Mechanical Dynamics and Systems Analysis. 2024; 01(02):26-30.
How to cite this URL: Gobinda Bauri, Arun Kumar Jhapate, Ritu Shrivastava. Artificial Intelligence Techniques for Image Dehazing: A Review. International Journal of Mechanical Dynamics and Systems Analysis. 2024; 01(02):26-30. Available from: https://journals.stmjournals.com/ijmdsa/article=2024/view=144715


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Regular Issue Subscription Review Article
Volume 01
Issue 02
Received March 15, 2024
Accepted March 28, 2024
Published April 30, 2024