Hyperspectral Imaging
- 2nd Edition - January 1, 2027
- Latest edition
- Editors: Jose Manuel Amigo, Giulia Gorla
- Language: English
Hyperspectral Imaging, Second Edition builds on the foundational insights of the first whilst reflecting the rapid advancements in hyperspectral and multispectral imaging techno… Read more
Description
Description
Key features
Key features
- Provides a comprehensive roadmap of hyperspectral and multispectral image analysis, with benefits and considerations for each method discussed
- Covers state-of-the-art applications in different scientific fields
- Discusses the implementation of hyperspectral devices in different environments
Readership
Readership
Table of contents
Table of contents
1. Hyperspectral and multispectral imaging: setting the scene
2. New hardware achievements
3. Types of Hyperspectral images and configuration of the measurements
Section II: Algorithms
4. Spectral and Spatial Pre-processing of hyperspectral and multispectral images
5. Pansharpening
6. Compression (including randomization)
7. Unsupervised exploration and clustering of hyperspectral and multispectral images
8. Multivariate curve resolution (Spectral Unmixing) for hyperspectral image analysis
9. Nonlinear Spectral Unmixing
10. Variability of the endmembers in spectral unmixing
11. An overview of regression methods in hyperspectral and multispectral imaging
12. Target Anomaly Detection methods
13. Supervised classification methods in hyperspectral imaging—recent advances
14. Fusion of hyperspectral images. A comprehensive perspective
15. Fusion of hyperspectral imaging and LiDAR for forest monitoring
16. Hyperspectral time series analysis: hyperspectral image data streams interpreted by modelling known and unknown variations
17. Statistical biophysical parameter retrieval and emulation with Gaussian processes
18. Hyperspectral super-resolution
19. Deep Learning in Hyperspectral Imaging
20. Spatial and spectral Limits of Detection
Section III: Recent Developments in the Applied Field
21. Different applications require different hyperspectral systems and different chemometric methodologies
22. Applications in remote sensing: natural landscapes
23. Applications in remote sensing: anthropogenic activities
24. Hyperspectral imaging in crop fields: precision agriculture
25. Food and feed production
26. Hyperspectral imaging for food-related microbiology applications
27. Hyperspectral imaging in medical applications
28. Hyperspectral imaging as a part of pharmaceutical product design
29. Hyperspectral imaging for artwork investigation
30. Industrial Hyperspectral Applications
31. Plastics in the environment
32. Forensic sciences
33. Planetary Science and Hyperspectral Imaging
34. Growing applications of hyperspectral and multispectral imaging
Section IV: Programming
35. A brief introduction to available hyperspectral image datasets and software that have been used in this book
36. Programming in Matlab
37. Programming in R
38. Programming in Python
Product details
Product details
- Edition: 2
- Latest edition
- Published: January 1, 2027
- Language: English
About the editors
About the editors
JA
Jose Manuel Amigo
GG
Giulia Gorla
Giulia Gorla is a Postdoctoral Researcher at the Department of Analytical Chemistry, University of Basque Country, Spain. She earned her Bachelor's degree in Chemistry and Industrial Chemistry in 2018 at the University of Insubria, Italy. Subsequently, in 2019, she completed her Master's degree in Chemistry at the same university. In 2023, she achieved her Ph.D. in Chemical and Environmental Sciences, specializing in analytical chemistry, graduating with honors (Cum Laude) with a doctoral thesis titled " Infrared spectroscopy and Chemometrics: facing analytical chemistry issues through data." Since January 2024, she has embarked on her first postdoctoral contract at the Department of Analytical Chemistry at UPV/EHU, related to the HyperSort – Hyperspectral Optical Engine project. Her scientific interests encompass analysing spectroscopic data, hyperspectral imaging, and applying and developing chemometrics, including Machine Learning and Deep Learning techniques. With 14 publications as author, she has supervised 8 undergraduate theses in the Department of Science and High Technology at the University of Insubria and 3 master's theses.