Top Banner
Multiframe Image Restoration
34

Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

Jan 11, 2016

Download

Documents

Welcome message from author
This document is posted to help you gain knowledge. Please leave a comment to let me know what you think about it! Share it to your friends and learn new things together.
Transcript
Page 1: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

Multiframe Image Restoration

Page 2: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

Outline

• Introduction

• Mathematical Models

• The restoration Problem

• Nuisance Parameters and Blind Restoration

• Applications

Page 3: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

Introduction

• Multiframe image restoration is concerned with the improvement of imagery acquired in the presence of varying degradations.

• In most situations digital data are acquired, and the restoration processing is carried out by a generator special-purpose digital computer.

Page 4: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

The general idea of restoration processing

Page 5: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

Google Image Search -- monkey

Page 6: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.
Page 7: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

Image Blur and Sampling

• System and environmental blur

• detector sampling

Page 8: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

System and Environmental Blur

• f is blurred by the imaging system, and the observable signal is

• the continuous-domain intensity is formed through a convolution relationship with the image intensity:

Page 9: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

System and Environmental Blur

• The point-spread function for diffraction is modeled by the space invariant function:

• the inner product operation

Page 10: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

System and Environmental Blur

• Imaging systems often suffer from various types of optical aberrations -imperfections in the figure of the system’s focusing element (usually a mirror or lens).

• The point-spread function takes the form:

Page 11: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

System and Environmental Blur

• e(u) is the aberration function

• An out-of-focus blur induces a quadratic aberration function:

• where r is the distance to the scene, d is the focal setting, and f is the focal length.

Page 12: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

System and Environmental Blur

• Wave propagation through an inhomogeneous medium such as the Earth’s atmosphere can induce additional distortions. These distortions are due to temperature-induced variations in the atmosphere’s refractive index, and they are frequently modeled in a manner similar to that used for system aberrations:

Page 13: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

Sampling

• The detection of imagery with discrete detector arrays results in the measurement of the (time-varying) sampled intensity:

Page 14: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

Sampling

• A sequence of image frames

is available for detection

•Each frame is recorded at the time t = t k , and the blur parameter takes the value 8k = 8, during the frame so that we write

Page 15: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

Nosie Models

• Electromagnetic waves such as light interact with matter in a fundamentally random way

• Quantum electrodynamics (QED) is the most sophisticated theory available for describing the detection of electromagnetic radiation.

• Electromagnetic energy is transported according to the classical theory of wave propagation, and the field energy is quantized only during the detection process

Page 16: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

Object Category Recognition

• the expected photocount for the nth detector during the k-th frame is:

• Read-out noise

Page 17: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

The Restoration Problem• The intensity function

Page 18: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

Restoration as an Optimization Problem

An optimization problem

Page 19: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

Methods

• Maximum-Likelihood Estimation

Gaussian Noise

Poisson Noise

Page 20: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

Methods

• Sieve-Constrained Maximum-Likelihood Estimation

Page 21: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

Methods

• Penalized Maximum-Likelihood Estimation

Page 22: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

Methods

• Maximum a Posteriori Estimation

Page 23: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

Methods

• Regularized Least-Squares Estimation

Page 24: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

Methods

• Minimum I-Divergence Estimation

Page 25: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

Linear Methods

• Linear methods for solving multiframe restoration problems are usually derived as solutions to the regularized least-squares problem:

Page 26: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

Linear Methods

• Linear methods for solving multiframe restoration problems are usually derived as solutions to the regularized least-squares problem:

Page 27: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

Linear Methods

• C is called the regularizing operator

Page 28: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

Linear Methods

• In matrix-vector notation, the regularized least-squares optimization problem can be reposed as

with the minimun-norm solution satisfying:

or

Page 29: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

Nonlinear (Iterative) Methods

• General optimization problem:

Page 30: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

Applications

• Fine-Resolution Imaging from Undersampled Image Sequences

• Ground-Based Imaging through Atmospheric Turbulence

• Ground-Based Solar Imaging I with Phase Diversity

Page 31: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

Applications

• Fine-Resolution Imaging from Undersampled Image Sequences

Page 32: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

Applications

• Ground-Based Imaging through Atmospheric Turbulence

Page 33: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.

Applications

• Ground-Based Solar Imaging I with Phase Diversity

Page 34: Multiframe Image Restoration. Outline Introduction Mathematical Models The restoration Problem Nuisance Parameters and Blind Restoration Applications.