Example-Based Super Resolution
Autor Jordi Salvadoren Limba Engleză Paperback – 22 sep 2016
Readers of this book will be able to understand the latest natural image patch statistical models and the performance limits of example-based super resolution algorithms, select the best state-of-the-art algorithmic alternative and tune it for specific use cases, and quickly put into practice implementations of the latest and most successful example-based super-resolution methods.
- Provides detailed coverage of techniques and implementation details that have been successfully introduced in diverse and demanding real-world applications
- Covers a wide variety of machine learning approaches, ranging from cross-scale self-similarity concepts and sparse coding, to the latest advances in deep learning
- Presents a statistical interpretation of the subspace of natural image patches that transcends super resolution and makes it a valuable source for any researcher on image processing or low-level vision
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Specificații
ISBN-13: 9780128097038
ISBN-10: 0128097035
Pagini: 162
Ilustrații: black & white illustrations
Dimensiuni: 152 x 229 x 14 mm
Greutate: 0.27 kg
Editura: ELSEVIER SCIENCE
ISBN-10: 0128097035
Pagini: 162
Ilustrații: black & white illustrations
Dimensiuni: 152 x 229 x 14 mm
Greutate: 0.27 kg
Editura: ELSEVIER SCIENCE
Public țintă
Computer vision scientists and researchers with undergraduate-level statistics knowledge whose work is related to imaging. Machine learning, image processing, and research and development communities.Cuprins
Chapter 1: Classic Multiframe Super Resolution
Chapter 2: A Taxonomy of Example-Based Super Resolution
Chapter 3: High-Frequency Transfer
Chapter 4: Neighbor Embedding
Chapter 5: Sparse Coding
Chapter 6: Anchored Regression
Chapter 7: Trees and Forests
Chapter 8: Deep Learning
Chapter 9: Conclusions
Chapter 2: A Taxonomy of Example-Based Super Resolution
Chapter 3: High-Frequency Transfer
Chapter 4: Neighbor Embedding
Chapter 5: Sparse Coding
Chapter 6: Anchored Regression
Chapter 7: Trees and Forests
Chapter 8: Deep Learning
Chapter 9: Conclusions