Advanced digital imaging laboratory using MATLAB® /
General Material Designation
[Book]
First Statement of Responsibility
by Leonid P. Yaroslavsky
PHYSICAL DESCRIPTION
Specific Material Designation and Extent of Item
1 PDF (various pagings) :
Other Physical Details
color illustrations
CONTENTS NOTE
Text of Note
Preface -- Author biography -- Introduction -- General remarks about the book -- Instructions for readers
Text of Note
Digital image formation and computational imaging -- Introduction -- Image recovery from sparse irregularly sampled data. Recovery of images with occlusions -- Numerical reconstruction of holograms -- Image reconstruction from projections -- Questions for self-testing
Text of Note
Image and noise statistical characterization and diagnostics -- Introduction -- Image histograms -- Image local moments and order statistics -- Pixel attributes and neighborhoods -- Image autocorrelation functions and power spectra -- Image noise -- Empirical diagnostics of image noise -- Questions for self-testing
Text of Note
Image correlators for detection and localization of objects -- Introduction -- Localization of a target on images contaminated with additive uncorrelated Gaussian noise. Normal and anomalous localization errors -- 'Matched filter' correlator versus signal-to-clutter ratio optimal correlator and local versus global signal-to-clutter ratio optimal correlators -- Object localization and image edges -- Questions for self-testing
Image resampling and building continuous image models -- Introduction -- Signal/image subsampling through fractional shifts -- Image resampling using 'continuous' image models -- The three-step rotation algorithm -- Comparison of image resampling methods -- Comparison of signal numerical differentiation and integration methods -- Questions for self-testing
Text of Note
Methods of image enhancement -- Introduction -- Contrast enhancement -- Edge extraction. Max-Min and Size-EV methods -- Questions for self-testing
Text of Note
Methods of image perfecting -- Introduction -- Correcting imaging system transfer functions -- Filtering periodical interferences. Filtering 'banding' noise -- 'Ideal' and empirical Wiener filtering for image denoising and deblurring -- Local adaptive filtering for image denoising -- Filtering impulsive noise using linear filters -- Image denoising using nonlinear (rank) filters -- Questions for self-testing
Text of Note
Statistical image models and pattern formation -- Introduction -- PWN models -- LF models -- PWN&LF and LF&PWN models -- Evolutionary models -- Questions for self-testing
0
8
8
8
8
8
8
8
8
SUMMARY OR ABSTRACT
Text of Note
This is an unusual book. It is a book of exercises, exercises in digital imaging engineering, one of the most important and rapidly developing branches of modern information technology. Studying digital imaging engineering, mastering this profession and working in the area is not possible without obtaining practical skills based on fundamental knowledge in the subject. The current book is aimed at providing technical support for this. It contains exercises on all major topics of digital imaging for students, researchers in experimental sciences and, generally, all practitioners in imaging engineering