
Combating Bad Weather Part II
Fog Removal from Image and Video
Morgan and Claypool Life Sciences (Publisher)
Published on 30. January 2015
Book
Paperback/Softback
84 pages
978-1-62705-586-4 (ISBN)
Description
Every year lives and properties are lost in road accidents. About one-fourth of these accidents are due to low vision in foggy weather. At present, there is no algorithm that is specifically designed for the removal of fog from videos. Application of a single-image fog removal algorithm over each video frame is a time-consuming and costly affair. It is demonstrated that with the intelligent use of temporal redundancy, fog removal algorithms designed for a single image can be extended to the real-time video application. Results confirm that the presented framework used for the extension of the fog removal algorithms for images to videos can reduce the complexity to a great extent with no loss of perceptual quality. This paves the way for the real-life application of the video fog removal algorithm. In order to remove fog, an efficient fog removal algorithm using anisotropic diffusion is developed. The presented fog removal algorithm uses new dark channel assumption and anisotropic diffusion for the initialization and refinement of the airlight map, respectively. Use of anisotropic diffusion helps to estimate the better airlight map estimation. The said fog removal algorithm requires a single image captured by uncalibrated camera system. The anisotropic diffusion-based fog removal algorithm can be applied in both RGB and HSI color space. This book shows that the use of HSI color space reduces the complexity further. The said fog removal algorithm requires pre- and post-processing steps for the better restoration of the foggy image. These pre- and post-processing steps have either data-driven or constant parameters that avoid the user intervention. Presented fog removal algorithm is independent of the intensity of the fog, thus even in the case of the heavy fog presented algorithm performs well. Qualitative and quantitative results confirm that the presented fog removal algorithm outperformed previous algorithms in terms of perceptual quality, color fidelity and execution time. The work presented in this book can find wide application in entertainment industries, transportation, tracking and consumer electronics.
More details
Series
Language
English
Place of publication
San Rafael, CA
United States
Publishing group
Morgan & Claypool Publishers
Dimensions
Height: 235 mm
Width: 187 mm
Weight
333 gr
ISBN-13
978-1-62705-586-4 (9781627055864)
Copyright in bibliographic data and cover images is held by Nielsen Book Services Limited or by the publishers or by their respective licensors: all rights reserved.
Schweitzer Classification
Content
- Acknowledgments
- Introduction
- Analysis of Fog
- Dataset and Performance Metrics
- Important Fog Removal Algorithms
- Single-Image Fog Removal Using an Anisotropic Diffusion
- Video Fog Removal Framework Using an Uncalibrated Single Camera System
- Conclusions and Future Directions
- Bibliography
- Authors' Biographies
- Introduction
- Analysis of Fog
- Dataset and Performance Metrics
- Important Fog Removal Algorithms
- Single-Image Fog Removal Using an Anisotropic Diffusion
- Video Fog Removal Framework Using an Uncalibrated Single Camera System
- Conclusions and Future Directions
- Bibliography
- Authors' Biographies