Motion Deblurring
A comprehensive guide to restoring images degraded by motion blur, bridging the traditional approaches and emerging computational photography-based techniques, and bringing together a wide range of methods emerging from basic theory as well as cutting-edge research. It encompasses both algorithms and architectures, providing detailed coverage of practical techniques by leading researchers. From an algorithms perspective, blind and non-blind approaches are discussed, including the use of single or multiple images; projective motion blur model; image priors and parametric models; high dynamic range imaging in the irradiance domain; and image recognition in blur. Performance limits for motion deblurring cameras are also presented. From a systems perspective, hybrid frameworks combining low-resolution-high-speed and high-resolution-low-speed cameras are described, along with the use of inertial sensors and coded exposure cameras. Also covered is an architecture exploiting compressive sensing for video recovery. A valuable resource for researchers and practitioners in computer vision, image processing, and related fields.
- Features novel methods based on computational photography
- Includes algorithms as well as systems for motion deblurring
- Provides comprehensive coverage of a wide array of topics in motion blur, serving as one-stop resource for any reader interested in motion blur
- Covers basics as well as most recent advances, being suitable both as a textbook and as an advanced compendium on motion blur at graduate level
Product details
No date availablePaperback
9781107621497
0 pages
0kg
150 b/w illus. 4 tables
Table of Contents
- 1. Mathematical models and practical solvers for uniform motion deblurring Jiaya Jia
- 2. Spatially varying image deblurring Neel Joshi, Sing Bing Kang and Richard Szeliski
- 3. Hybrid-imaging for motion deblurring Moshe Ben-Ezra, Yu-Wing Tai, Michael Brown and Shree Nayar
- 4. Removing camera shake in smart phones without hardware stabilization Filip Sroubek and Jan Flusser
- 5. Richardson–Lucy deblurring for scenes under a projective motion path Yu-Wing Tai and Michael Brown
- 6. Multi-sensor fusion for motion deblurring Jingyi Yu
- 7. Flutter-shutter cameras for motion deblurring Amit Agrawal
- 8. Efficient, blind, spatially-variant deblurring for shaken images Oliver Whyte, Josef Sivic, Andrew Zisserman and Jean Ponce
- 9. Coded-exposure motion deblurring for recognition Scott McCloskey
- 10. HDR imaging in the presence of motion blur C. S. Vijay, C. Paramanand and A. N. Rajagopalan
- 11. Compressive video sensing to tackle motion blur Ashok Veeraraghavan
- 12. Direct recognition of motion blurred faces Kaushik Mitra, Priyanka Vageeswaran and Rama Chellappa
- 13. Performance limits for motion deblurring cameras Olliver Cossairt and Mohit Gupta.