did-you-know? rent-now

Amazon no longer offers textbook rentals. We do!

did-you-know? rent-now

Amazon no longer offers textbook rentals. We do!

We're the #1 textbook rental company. Let us show you why.

9780470844731

Fundamentals of Digital Image Processing A Practical Approach with Examples in Matlab

by ;
  • ISBN13:

    9780470844731

  • ISBN10:

    0470844736

  • Edition: 1st
  • Format: Paperback
  • Copyright: 2011-01-04
  • Publisher: Wiley
  • Purchase Benefits
List Price: $118.34 Save up to $0.59
  • Buy New
    $117.75
    Add to Cart Free Shipping Icon Free Shipping

    PRINT ON DEMAND: 2-4 WEEKS. THIS ITEM CANNOT BE CANCELLED OR RETURNED.

Supplemental Materials

What is included with this book?

Summary

This is an introductory text on the science of image processing, which employs the Matlab programming language to illustrate some of the elementary, key concepts in modern image processing and pattern recognition drawing on specific examples from within science, medicine and electronics.It provides a comprehensive introduction to some of the key concepts and techniques of modern image processing and to offers a framework within which these concepts can be understood by a series of well chosen examples, exercises and computer experiments.Clearly divided into three distinct sections, the book begins with a fast-start introduction to the material to enhance accessibility. Subsequent chapters offer an advanced discussion of topics involving more difficult concepts and the final section looks at the application of Matlab to image processing.Prior experience of Matlab is not required nor is access to Matlab, as the book is stand-alone. Matlab is frequently referred to as the tool for conducting experiments and for solving the problems, as it is ideally suited to this role and is widely available. Features a complimentary website featuring solutions to the exercises, a forum for discussion and accessibility to files corresponding to the examples and exercises within the book Includes numerous examples, graded exercises and computer experiments

Author Biography

Dr Chris Solomon, Applied Optics Group, School of Physical Sciences, The University of Kent, Canterbury, Kent, UK.

Dr Stuart Gibson, VisionMetric, Canterbury, Kent, UK.

Table of Contents

Preface.

Using the book website.

1 Representation.

1.1 What is an image?

1.1.1 Image layout.

1.1.2 Image colour.

1.2 Resolution and quantization.

1.2.1 Bit-plane splicing.

1.3 Image formats.

1.3.1 Image data types.

1.3.2 Image compression.

1.4 Colour spaces.

1.4.1 RGB.

1.4.2 Perceptual colour space.

1.5 Images in Matlab.

1.5.1 Reading, writing and querying images.

1.5.2 Basic display of images.

1.5.3 Accessing pixel values.

1.5.4 Converting image types.

Exercises.

2 Formation.

2.1 How is an image formed?

2.2 The mathematics of image formation.

2.2.1 Introduction.

2.2.2 Linear imaging systems.

2.2.3 Linear superposition integral.

2.2.4 The Dirac delta or impulse function.

2.2.5 The point-spread function.

2.2.6?Linear shift-invariant systems and the convolution integral.

2.2.7?Convolution: its importance and meaning.

2.2.8 Multiple convolution: N imaging elements in a linear shift-invariant system.

2.2.9 Digital convolution.

2.3 The engineering of image formation.

2.3.1 The camera.

2.3.2 The digitization process.

2.3.3 Noise.

Exercises.

3 Pixels.

3.1 What is a pixel?

3.2 Operations upon pixels.

3.2.1?? ?Arithmetic operations on images.

3.2.1.2 Multiplication and division.

3.2.2 Logical operations on images.

3.2.3 Thresholding.

3.3 Point-based operations on images.

3.3.1 Logarithmic transform.

3.3.2 Exponential transform.

3.3.3 Power-law (gamma) transform.

3.4 Pixel distributions: histograms.

3.4.1 Histograms for threshold selection.

3.4.2 Adaptive thresholding.

3.4.3 Contrast stretching.

3.4.4 Histogram equalization.

3.4.5 Histogram matching.

3.4.6 Adaptive histogram equalization.

3.4.7 Histogram operations on colour images.

Exercises.

4 Enhancement.

4.1 Why perform enhancement?

4.2 Pixel neighbourhoods.

4.3 Filter kernels and the mechanics of linear filtering.

4.3.1 Nonlinear spatial filtering.

4.4 Filtering for noise removal.

4.4.1 Mean filtering.

4.4.2 Median filtering.

4.4.3 Rank filtering.

4.4.4 Gaussian filtering.

4.5 Filtering for edge detection.

4.5.1 Derivative filters for discontinuities.

4.5.2 First-order edge detection.

4.5.3 Second-order edge detection.

4.6 Edge enhancement.

4.6.1 Laplacian edge sharpening.

4.6.2 The unsharp mask filter.

Exercises.

5 Fourier transforms and frequency-domain processing.

5.1 Frequency space: a friendly introduction.

5.2 Frequency space: the fundamental idea.

5.2.1 The Fourier series.

5.3 Calculation of the Fourier spectrum.

5.4 5.4 Complex Fourier series.

5.5 The 1-D Fourier transform.

5.6 The inverse Fourier transform and reciprocity.

5.7 The 2-D Fourier transform.

5.8 Understanding the Fourier transform: frequency-space filtering.

5.9 Linear systems and Fourier transforms.

5.10 The convolution theorem.

5.11 The optical transfer function.

5.12 Digital Fourier transforms: the discrete fast Fourier transform.

5.13 Sampled data: the discrete Fourier transform.

5.14 The centred discrete Fourier transform.

6 Image restoration.

6.1 Imaging models.

6.2 Nature of the point-spread function and noise.

6.3 Restoration by the inverse Fourier filter.

6.4 The Wiener?Helstrom Filter.

6.5 Origin of the Wiener?Helstrom filter.

6.6 Acceptable solutions to the imaging equation.

6.7 Constrained deconvolution.

6.8?Estimating an unknown point-spread function or optical transfer function.

6.9?Blind deconvolution.

6.10 Iterative deconvolution and the Lucy?Richardson algorithm.

6.11 Matrix formulation of image restoration.

6.12 The standard least-squares solution.

6.13 Constrained least-squares restoration.

6.14 Stochastic input distributions and Bayesian estimators.

6.15 The generalized Gauss?Markov estimator.

7 Geometry.

7.1 The description of shape.

7.2 Shape-preserving transformations.

7.3 Shape transformation and homogeneous coordinates.

7.4 The general 2-D affine transformation.

7.5 Affine transformation in homogeneous coordinates .

7.6 The Procrustes transformation.

7.7 Procrustes alignment.

7.8 The projective transform.

7.9 Nonlinear transformations.

7.10Warping: the spatial transformation of an image.

7.11 Overdetermined spatial transformations.

7.12 The piecewise warp.

7.13 The piecewise affine warp.

7.14 Warping: forward and reverse mapping.

8?Morphological processing.

8.1 Introduction.

8.2 Binary images: foreground, background and connectedness.

8.3 Structuring elements and neighbourhoods.

8.4 Dilation and erosion.

8.5 Dilation, erosion and structuring elements within Matlab.

8.6 Structuring element decomposition and Matlab.

8.7 Effects and uses of erosion and dilation.

8.7.1 Application of erosion to particle sizing.

8.8 Morphological opening and closing.

8.8.1 The rolling-ball analogy.

8.9 Boundary extraction.

8.10 Extracting connected components.

8.11 Region filling.

8.12 The hit-or-miss transformation.

8.12.1 Generalization of hit-or-miss.

8.13 Relaxing constraints in hit-or-miss: ?don?t care? pixels.

8.13.1 Morphological thinning.

8.14 Skeletonization.

8.15 Opening by reconstruction.

8.16 Grey-scale erosion and dilation.

8.17 Grey-scale structuring elements: general case.

8.18 Grey-scale erosion and dilation with flat structuring elements.

8.19 Grey-scale opening and closing.

8.20 The top-hat transformation.

8.21 Summary.

Exercises.

9?Features.

9.1 Landmarks and shape vectors.

9.2 Single-parameter shape descriptors.

9.3 Signatures and the radial Fourier expansion.

9.4 Statistical moments as region descriptors.

9.5 Texture features based on statistical measures.

9.6 Principal component analysis.

9.7 Principal component analysis: an illustrative example.

9.8 Theory of principal component analysis: version 1.

9.9 Theory of principal component analysis: version 2.

9.10 Principal axes and principal components.

9.11 Summary of properties of principal component analysis.

9.12 Dimensionality reduction: the purpose of principal component analysis.

9.13 Principal components analysis on an ensemble of digital images.

9.14 Representation of out-of-sample examples using principal component analysis.

9.15 Key example: eigenfaces and the human face.

10 Image Segmentation.

10.1 Image segmentation.

10.2 Use of image properties and features in segmentation.

10.3 Intensity thresholding.

10.3.1 Problems with global thresholding.

10.4 Region growing and region splitting.

10.5 Split-and-merge algorithm.

10.6 The challenge of edge detection.

10.7 The Laplacian of Gaussian and difference of Gaussians filters.

10.8 The Canny edge detector.

10.9 Interest operators.

10.10 Watershed segmentation.

10.11 Segmentation functions.

10.12 Image segmentation with Markov random fields.

10.12.1 Parameter estimation.

10.12.2 Neighbourhood weighting parameter θn

10.12.3 Minimizing U(x|y): the iterated conditional modes algorithm.

11 Classification.

11.1 The purpose of automated classification.

11.2 Supervised and unsupervised classification.

11.3 Classification: a simple example.

11.4 Design of classification systems.

11.5 Simple classifiers: prototypes and minimum distance criteria.

11.6 Linear discriminant functions.

11.7 Linear discriminant functions in N dimensions.

11.8 Extension of the minimum distance classifier and the Mahalanobis distance.

11.9 Bayesian classification: definitions.

11.10 The Bayes decision rule.

11.11 The multivariate normal density.

11.12 Bayesian classifiers for multivariate normal distributions.

11.12.1 The Fisher linear discriminant.

11.12.2 Risk and cost functions.

11.13 Ensemble classifiers.

11.13.1 Combining weak classifiers: the AdaBoost method.

11.14 Unsupervised learning: k-means clustering.

Further reading.

Index.

Supplemental Materials

What is included with this book?

The New copy of this book will include any supplemental materials advertised. Please check the title of the book to determine if it should include any access cards, study guides, lab manuals, CDs, etc.

The Used, Rental and eBook copies of this book are not guaranteed to include any supplemental materials. Typically, only the book itself is included. This is true even if the title states it includes any access cards, study guides, lab manuals, CDs, etc.

Rewards Program