Provides the latest fuzzy sets methods using higher level information for advanced tasks
Shares many insights into fuzzy spatial objects, including fuzzy geometry
Covers machine learning in image processing and understanding
Isabelle Bloch is a Professor at Telecom ParisTech.
Anca Ralescu is a Professor at the University of Cincinnati.
This book provides a thorough overview of recent methods using higher level information (object or scene level) for advanced tasks such as image understanding along with their applications to medical images. Advanced methods for fuzzy image processing and understanding are presented, including fuzzy spatial objects, geometry and topology, mathematical morphology, machine learning, verbal deillegalscriptions of image content, fusion, spatial relations, and structural representations. For each methodological aspect covered, illustrations from the medical imaging domain are provided. This is an ideal book for graduate students and researchers in the field of medical image processing.|
Enriches reader understanding of the latest fuzzy sets methods using higher level information (object or scene level) for advanced tasks, such as image understanding
Shares many insights into fuzzy spatial objects, including fuzzy geometry and topology as well as set theoretical operations
Covers in detail machine learning in image processing and understanding, with special focus on clustering, classification, and basic and advanced fuzzy methods
1. Introduction
2. Preliminaries
3. Fuzzy spatial objects (fuzzy geometry and topology, set theoretic operations)
4. Mathematical morphology
5. Distances and similarities between fuzzy sets
6. Machine learning in image processing and understanding
7. Fusion
8. Spatial relations
9. Structural representations.
This book provides a thorough overview of recent methods using higher level information (object or scene level) for advanced tasks such as image understanding along with their applications to medical images. Advanced methods for fuzzy image processing and understanding are presented, including fuzzy spatial objects, geometry and topology, mathematical morphology, machine learning, verbal deillegalscriptions of image content, fusion, spatial relations, and structural representations. For each methodological aspect covered, illustrations from the medical imaging domain are provided. This is an ideal book for graduate students and researchers in the field of medical image processing.
This book also:
- Enriches reader understanding of the latest fuzzy sets methods using higher level information (object or scene level) for advanced tasks, such as image understanding
- Shares many insights into fuzzy spatial objects, including fuzzy geometry and topology as well as set theoretical operations
- Covers in detail machine learning in image processing and understanding, with special focus on clustering, classification, and basic and advanced fuzzy methods
Introduction.- Preliminaries.- Fuzzy spatial objects (fuzzy geometry and topology, set theoretic operations).- Mathematical morphology.- Distances and similarities between fuzzy sets.- Machine learning in image processing and understanding.- Fusion.- Spatial relations.- Structural representations.
Isabelle Bloch is a Professor at Telecom ParisTech.
Anca Ralescu is a Professor at the University of Cincinnati.
Inhaltsverzeichnis
1. Introduction2. Preliminaries3. Fuzzy spatial objects (fuzzy geometry and topology, set theoretic operations)4. Mathematical morphology5. Distances and similarities between fuzzy sets6. Machine learning in image processing and understanding7. Fusion8. Spatial relations9. Structural representations.
Enriches reader understanding of the latest fuzzy sets methods using higher level information (object or scene level) for advanced tasks, such as image understanding
Shares many insights into fuzzy spatial objects, including fuzzy geometry and topology as well as set theoretical operations
Covers in detail machine learning in image processing and understanding, with special focus on clustering, classification, and basic and advanced fuzzy methods