Description
Efnisyfirlit
- Contents
- Preface
- Acknowledgments
- The Book Website
- The DIP4E Support Packages
- About the Authors
- 1 Introduction
- What is Digital Image Processing?
- The Origins of Digital Image Processing
- Examples of Fields that Use Digital Image Processing
- Fundamental Steps in Digital Image Processing
- Components of an Image Processing System
- 2 Digital Image Fundamentals
- Elements of Visual Perception
- Light and the Electromagnetic Spectrum
- Image Sensing and Acquisition
- Image Sampling and Quantization
- Some Basic Relationships Between Pixels
- Introduction to the Basic Mathematical Tools Used in Digital Image Processing
- 3 Intensity Transformations and Spatial Filtering
- Background
- Some Basic Intensity Transformation Functions
- Histogram Processing
- Fundamentals of Spatial Filtering
- Smoothing (Lowpass) Spatial Filters
- Sharpening (Highpass) Spatial Filters
- Highpass, Bandreject, and Bandpass Filters from Lowpass Filters
- Combining Spatial Enhancement Methods
- 4 Filtering in the Frequency Domain
- Background
- Preliminary Concepts
- Sampling and the Fourier Transform of Sampled Functions
- The Discrete Fourier Transform of One Variable
- Extensions to Functions of Two Variables
- Some Properties of the 2-D DFT and IDFT
- The Basics of Filtering in the Frequency Domain
- Image Smoothing Using Lowpass Frequency Domain Filters
- Image Sharpening Using Highpass Filters
- Selective Filtering
- The Fast Fourier Transform
- 5 Image Restoration and Reconstruction
- A Model of the Image Degradation/Restoration process
- Noise Models
- Restoration in the Presence of Noise Only—Spatial Filtering
- Periodic Noise Reduction Using Frequency Domain Filtering
- Linear, Position-Invariant Degradations
- Estimating the Degradation Function
- Inverse Filtering
- Minimum Mean Square Error (Wiener) Filtering
- Constrained Least Squares Filtering
- Geometric Mean Filter
- Image Reconstruction from Projections
- 6 Color Image Processing
- Color Fundamentals
- Color Models
- Pseudocolor Image Processing
- Basics of Full-Color Image Processing
- Color Transformations
- Color Image Smoothing and Sharpening
- Using Color in Image Segmentation
- Noise in Color Images
- Color Image Compression
- 7 Wavelet and Other Image Transforms
- Preliminaries
- Matrix-based Transforms
- Correlation
- Basis Functions in the Time-Frequency Plane
- Basis Images
- Fourier-Related Transforms
- Walsh-Hadamard Transforms
- Slant Transform
- Haar Transform
- Wavelet Transforms
- 8 Image Compression and Watermarking
- Fundamentals
- Huffman Coding
- Golomb Coding
- Arithmetic Coding
- LZW Coding
- Run-length Coding
- Symbol-based Coding
- Bit-plane Coding
- Block Transform Coding
- Predictive Coding
- Wavelet Coding
- Digital Image Watermarking
- 9 Morphological Image Processing
- Preliminaries
- Erosion and Dilation
- Opening and Closing
- The Hit-or-Miss Transform
- Some Basic Morphological Algorithms
- Morphological Reconstruction
- Summary of Morphological Operations on Binary Images
- Grayscale Morphology
- 10 Image Segmentation
- Fundamentals
- Point, Line, and Edge Detection
- Thresholding
- Segmentation by Region Growing and by Region Splitting and Merging
- Region Segmentation Using Clustering and Superpixels
- Region Segmentation Using Graph Cuts
- Segmentation Using Morphological Watersheds
- The Use of Motion in Segmentation
- 11 Feature Extraction
- Background
- Boundary Preprocessing
- Boundary Feature Descriptors
- Region Feature Descriptors
- Principal Components as Feature Descriptors
- Whole-Image Features
- Scale-Invariant Feature Transform (SIFT)
- 12 Image Pattern Classification
- Background
- Patterns and Pattern Classes
- Pattern Classification by Prototype Matching
- Optimum (Bayes) Statistical Classifiers
- Neural Networks and Deep Learning
- Deep Convolutional Neural Networks
- Some Additional Details of Implementation
- Bibliography
- Index
- Back Cover
Reviews
There are no reviews yet.