David Tschumperle (GREYC Research scientist in Computer Science), Christophe Tilmant (Institut Pascal (UMR-CNRS 6602) ), Vincent Barra (LIMOS (UMR-CNRS 6158) )
Digital Image Processing with C++
Implementing Reference Algorithms with the CImg Library
David Tschumperle (GREYC Research scientist in Computer Science), Christophe Tilmant (Institut Pascal (UMR-CNRS 6602) ), Vincent Barra (LIMOS (UMR-CNRS 6158) )
Digital Image Processing with C++
Implementing Reference Algorithms with the CImg Library
- Gebundenes Buch
- Merkliste
- Auf die Merkliste
- Bewerten Bewerten
- Teilen
- Produkt teilen
- Produkterinnerung
- Produkterinnerung
Digital Image Processing with C++ presents the theory of digital image processing, and implementations of algorithms using a dedicated library. Anyone wishing to discover or specialize in this discipline, quickly prototype new algorithms, or develop courses, will find all the material they need in this book.
Andere Kunden interessierten sich auch für
- David Tschumperle (GREYC Research scientist in Computer Science)Digital Image Processing with C++81,99 €
- Tamara MunznerVisualization Analysis and Design94,99 €
- Nadieh BremerData Sketches56,99 €
- Nadieh BremerData Sketches139,99 €
- Yevgeniy V. GalperinAn Image Processing Tour of College Mathematics90,99 €
- Mario Botsch (Bielefeld University)Polygon Mesh Processing85,99 €
- M. BennamounObject Recognition184,99 €
-
-
-
Digital Image Processing with C++ presents the theory of digital image processing, and implementations of algorithms using a dedicated library. Anyone wishing to discover or specialize in this discipline, quickly prototype new algorithms, or develop courses, will find all the material they need in this book.
Hinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.
Hinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.
Produktdetails
- Produktdetails
- Verlag: Taylor & Francis Ltd
- Seitenzahl: 292
- Erscheinungstermin: 17. März 2023
- Englisch
- Abmessung: 254mm x 178mm x 19mm
- Gewicht: 782g
- ISBN-13: 9781032347523
- ISBN-10: 103234752X
- Artikelnr.: 66266519
- Verlag: Taylor & Francis Ltd
- Seitenzahl: 292
- Erscheinungstermin: 17. März 2023
- Englisch
- Abmessung: 254mm x 178mm x 19mm
- Gewicht: 782g
- ISBN-13: 9781032347523
- ISBN-10: 103234752X
- Artikelnr.: 66266519
David Tschumperle is a permanent CNRS Research Scientist, heading the IMAGE team at the GREYC Laboratory, in Caen / France. He's particularly interested in partial differential equations and variational methods for processing multi-valued images in a local or non-local way. He has authored more than 40 papers in journals or conferences and is the project leader of CImg and G'MIC, two open-source software/libraries. Christophe Tilmant is Associate Professor in Computer Science at Clermont-Auvergne University. His research activities include image processing, artificial intelligence, where he has authored more than 30 papers. His teaching includes deep learning, image processing and network security. He participates or leads several French research programs. Vincent Barra is a full Professor in Computer Science at Clermont-Auvergne University, and Associate Director of the LIMOS Lab. He teaches artificial intelligence and image processing in engineering schools and in master's programs. His research activities focus on n-dimensional data analysis, with methodological and application aspects in various fields. He has authored more than 90 papers in journal or conferences, and participates or leads several French and European research programs.
I INTRODUCTION TO Clmg
1. Introduction. 2. Getting Started With the CImg Library. 2.1 Objective:
subdivide an image into blocks. 2.2 Setup and first program. 2.3 Computing
the variations. 2.4 Computing the block decomposition. 2.5 Rendering of the
decomposition. 2.6 Interactive visualization. 2.7 Final source code
II IMAGE PROCESSING USING CImg
3. Point Processing Transformations. 3.1 Image operations. 3.2 Histogram
operations. 4. Mathematical Morphology. 4.1 Binary images. 4.2 Gray-level
images. 4.3 Some applications. 5. Filtering. 5.1 Spatial filtering. 5.2
Recursive filtering. 5.3 Frequency filtering. 5.4 Diffusion filtering. 6.
Feature Extraction. 6.1 Points of interest. 6.2 Hough transform. 6.3
Texture features. 7. Segmentation. 7.1 Edge-based approaches. 7.2
Region-based approaches. 8. Motion Estimation. 8.1 Optical flow: dense
motion estimation. 8.2 Sparse estimation. 9. Multispectral Approaches. 9.1
Dimension reduction. 9.2 Color imaging. 10. 3D Visualisation. 10.1
Structuring of 3D mesh objects. 10.2 3D plot of a function z = f (x;y).
10.3 Creating complex 3D objects. 10.4 Visualization of a cardiac
segmentation in MRI. 11. And So Many Other Things. 11.1 Compression by
transform (JPEG). 11.2 Tomographic reconstruction. 11.3 Stereovision. 11.4
Interactive deformation using RBF.
List of CImg Codes.
References.
Index.
1. Introduction. 2. Getting Started With the CImg Library. 2.1 Objective:
subdivide an image into blocks. 2.2 Setup and first program. 2.3 Computing
the variations. 2.4 Computing the block decomposition. 2.5 Rendering of the
decomposition. 2.6 Interactive visualization. 2.7 Final source code
II IMAGE PROCESSING USING CImg
3. Point Processing Transformations. 3.1 Image operations. 3.2 Histogram
operations. 4. Mathematical Morphology. 4.1 Binary images. 4.2 Gray-level
images. 4.3 Some applications. 5. Filtering. 5.1 Spatial filtering. 5.2
Recursive filtering. 5.3 Frequency filtering. 5.4 Diffusion filtering. 6.
Feature Extraction. 6.1 Points of interest. 6.2 Hough transform. 6.3
Texture features. 7. Segmentation. 7.1 Edge-based approaches. 7.2
Region-based approaches. 8. Motion Estimation. 8.1 Optical flow: dense
motion estimation. 8.2 Sparse estimation. 9. Multispectral Approaches. 9.1
Dimension reduction. 9.2 Color imaging. 10. 3D Visualisation. 10.1
Structuring of 3D mesh objects. 10.2 3D plot of a function z = f (x;y).
10.3 Creating complex 3D objects. 10.4 Visualization of a cardiac
segmentation in MRI. 11. And So Many Other Things. 11.1 Compression by
transform (JPEG). 11.2 Tomographic reconstruction. 11.3 Stereovision. 11.4
Interactive deformation using RBF.
List of CImg Codes.
References.
Index.
I INTRODUCTION TO Clmg
1. Introduction. 2. Getting Started With the CImg Library. 2.1 Objective:
subdivide an image into blocks. 2.2 Setup and first program. 2.3 Computing
the variations. 2.4 Computing the block decomposition. 2.5 Rendering of the
decomposition. 2.6 Interactive visualization. 2.7 Final source code
II IMAGE PROCESSING USING CImg
3. Point Processing Transformations. 3.1 Image operations. 3.2 Histogram
operations. 4. Mathematical Morphology. 4.1 Binary images. 4.2 Gray-level
images. 4.3 Some applications. 5. Filtering. 5.1 Spatial filtering. 5.2
Recursive filtering. 5.3 Frequency filtering. 5.4 Diffusion filtering. 6.
Feature Extraction. 6.1 Points of interest. 6.2 Hough transform. 6.3
Texture features. 7. Segmentation. 7.1 Edge-based approaches. 7.2
Region-based approaches. 8. Motion Estimation. 8.1 Optical flow: dense
motion estimation. 8.2 Sparse estimation. 9. Multispectral Approaches. 9.1
Dimension reduction. 9.2 Color imaging. 10. 3D Visualisation. 10.1
Structuring of 3D mesh objects. 10.2 3D plot of a function z = f (x;y).
10.3 Creating complex 3D objects. 10.4 Visualization of a cardiac
segmentation in MRI. 11. And So Many Other Things. 11.1 Compression by
transform (JPEG). 11.2 Tomographic reconstruction. 11.3 Stereovision. 11.4
Interactive deformation using RBF.
List of CImg Codes.
References.
Index.
1. Introduction. 2. Getting Started With the CImg Library. 2.1 Objective:
subdivide an image into blocks. 2.2 Setup and first program. 2.3 Computing
the variations. 2.4 Computing the block decomposition. 2.5 Rendering of the
decomposition. 2.6 Interactive visualization. 2.7 Final source code
II IMAGE PROCESSING USING CImg
3. Point Processing Transformations. 3.1 Image operations. 3.2 Histogram
operations. 4. Mathematical Morphology. 4.1 Binary images. 4.2 Gray-level
images. 4.3 Some applications. 5. Filtering. 5.1 Spatial filtering. 5.2
Recursive filtering. 5.3 Frequency filtering. 5.4 Diffusion filtering. 6.
Feature Extraction. 6.1 Points of interest. 6.2 Hough transform. 6.3
Texture features. 7. Segmentation. 7.1 Edge-based approaches. 7.2
Region-based approaches. 8. Motion Estimation. 8.1 Optical flow: dense
motion estimation. 8.2 Sparse estimation. 9. Multispectral Approaches. 9.1
Dimension reduction. 9.2 Color imaging. 10. 3D Visualisation. 10.1
Structuring of 3D mesh objects. 10.2 3D plot of a function z = f (x;y).
10.3 Creating complex 3D objects. 10.4 Visualization of a cardiac
segmentation in MRI. 11. And So Many Other Things. 11.1 Compression by
transform (JPEG). 11.2 Tomographic reconstruction. 11.3 Stereovision. 11.4
Interactive deformation using RBF.
List of CImg Codes.
References.
Index.