Adaptive Image Processing : A Computational Intelligence Perspective, Second Edition /: A Computational Intelligence Perspective, Second Edition. (2018)
- Record Type:
- Book
- Title:
- Adaptive Image Processing : A Computational Intelligence Perspective, Second Edition /: A Computational Intelligence Perspective, Second Edition. (2018)
- Main Title:
- Adaptive Image Processing : A Computational Intelligence Perspective, Second Edition
- Further Information:
- Note: Kim-Hui Yap, Ling Guan, Stuart William Perry, Hau San Wong.
- Authors:
- Yap, Kim Hui
Guan, Ling
Perry, Stuart William
Wong, Hau-San - Contents:
- Introduction; Importance of Vision; Adaptive Image Processing; Three Main Image Feature Classes; Difficulties in Adaptive Image-Processing System Design; Computational Intelligence Techniques; Scope of the Book; Contributions of the Current Work; Overview of This Book; Fundamentals of CI-Inspired Adaptive Image Restoration; Image Distortions; Image Restoration; Constrained Least Square Error; Neural Network Restoration; Neural Network Restoration Algorithms in the Literature; An Improved Algorithm; Analysis; Implementation Considerations; Numerical Study of the Algorithms; Summary; Spatially Adaptive Image Restoration; Dealing with Spatially Variant Distortion; Adaptive Constraint Extension of the Penalty Function Model; Correcting Spatially Variant Distortion Using Adaptive Constraints; Semiblind Restoration Using Adaptive Constraints; Implementation Considerations; More Numerical Examples; Numerical Examples; Local Variance Extension of the Lagrange Model; Summary; Acknowledgments; Regional Training Set Definition; Determination of the Image Partition; Edge-Texture Characterization Measure; ETC Fuzzy HMBNN for Adaptive Regularization; Theory of Fuzzy Sets; Edge-Texture Fuzzy Model Based on ETC Measure; Architecture of the Fuzzy HMBNN; Estimation of the Desired Network Output; Fuzzy Prediction of Desired Gray-Level Value; Experimental Results; Summary; Adaptive Regularization Using Evolutionary Computation; Introduction to Evolutionary Computation; ETC-pdf Image Model;Introduction; Importance of Vision; Adaptive Image Processing; Three Main Image Feature Classes; Difficulties in Adaptive Image-Processing System Design; Computational Intelligence Techniques; Scope of the Book; Contributions of the Current Work; Overview of This Book; Fundamentals of CI-Inspired Adaptive Image Restoration; Image Distortions; Image Restoration; Constrained Least Square Error; Neural Network Restoration; Neural Network Restoration Algorithms in the Literature; An Improved Algorithm; Analysis; Implementation Considerations; Numerical Study of the Algorithms; Summary; Spatially Adaptive Image Restoration; Dealing with Spatially Variant Distortion; Adaptive Constraint Extension of the Penalty Function Model; Correcting Spatially Variant Distortion Using Adaptive Constraints; Semiblind Restoration Using Adaptive Constraints; Implementation Considerations; More Numerical Examples; Numerical Examples; Local Variance Extension of the Lagrange Model; Summary; Acknowledgments; Regional Training Set Definition; Determination of the Image Partition; Edge-Texture Characterization Measure; ETC Fuzzy HMBNN for Adaptive Regularization; Theory of Fuzzy Sets; Edge-Texture Fuzzy Model Based on ETC Measure; Architecture of the Fuzzy HMBNN; Estimation of the Desired Network Output; Fuzzy Prediction of Desired Gray-Level Value; Experimental Results; Summary; Adaptive Regularization Using Evolutionary Computation; Introduction to Evolutionary Computation; ETC-pdf Image Model; Adaptive Regularization Using Evolutionary Programming; Experimental Results; Other Evolutionary Approaches for Image Restoration; Summary; Blind Image Deconvolution; Computational Reinforced Learning; Soft-Decision Method; Simulation Examples; Conclusions; Edge Detection Using Model-Based Neural Networks; MBNN Model for Edge Characterization; Network Architecture; Training Stage; Recognition Stage; Experimental Results; Summary; Image Analysis and Retrieval via Self-Organization; Self-Organizing Map (SOM); Self-Organizing Tree Map (SOTM); SOTM in Impulse Noise Removal; SOTM in Content-Based Retrieval; Genetic Optimization of Feature Representation for Compressed-Domain Image Categorization; Compressed-Domain Representation; Problem Formulation; Multiple-Classifier Approach; Experimental Results; Conclusion; Content-Based Image Retrieval Using Computational Intelligence Techniques; Problem Description and Formulation; Soft Relevance Feedback in CBIR; Predictive-Label Fuzzy Support Vector Machine for Small Sample Problem; Conclusion; … (more)
- Edition:
- 2nd
- Publisher Details:
- CRC Press
- Publication Date:
- 2018
- Extent:
- 1 online resource (376 pages), (22 illustrations)
- Languages:
- English
- ISBNs:
- 9781351834513
1351834517 - Access Rights:
- Legal Deposit; Only available on premises controlled by the deposit library and to one user at any one time; The Legal Deposit Libraries (Non-Print Works) Regulations (UK).
- Access Usage:
- Restricted: Printing from this resource is governed by The Legal Deposit Libraries (Non-Print Works) Regulations (UK) and UK copyright law currently in force.
- View Content:
- Available online (eLD content is only available in our Reading Rooms) ↗
- Physical Locations:
- British Library HMNTS - ELD.DS.346065
- Ingest File:
- 01_299.xml