-
Book Overview & Buying
-
Table Of Contents
Hands-On Image Processing and Computer Vision with Python - Second Edition
By :
In this chapter, we explored the fundamental and advanced approaches to image restoration, ranging from classical signal-processing methods to modern sparse and model-based techniques. We began with non-blind deblurring methods such as Wiener filtering and Tikhonov regularization, interpreting them through the lens of Bayesian estimation. We then discussed iterative approaches like CLEAN and advanced priors through sparse representations and matching pursuit algorithms, highlighting their ability to capture fine structures in images.
Throughout, we emphasized both the theoretical underpinnings, from inverse problem formulations to regularization and Bayesian estimation, and the practical implementation using Python code demonstrations. This dual perspective equips readers to understand not only how these methods work but also why they succeed or fail under different conditions.
Image restoration remains a central problem in image processing and computer vision, bridging...
Change the font size
Change margin width
Change background colour