Hyperspectral Remote Sensing
Theory and Applications
- 1st Edition - August 5, 2020
- Editors: Prem Chandra Pandey, Prashant K. Srivastava, Heiko Balzter, Bimal Bhattacharya, George P. Petropoulos
- Language: English
- Paperback ISBN:9 7 8 - 0 - 0 8 - 1 0 2 8 9 4 - 0
- eBook ISBN:9 7 8 - 0 - 0 8 - 1 0 2 8 9 5 - 7
Hyperspectral Remote Sensing: Theory and Applications offers the latest information on the techniques, advances and wide-ranging applications of hyperspectral remote sensing,… Read more

Purchase options
Institutional subscription on ScienceDirect
Request a sales quoteHyperspectral Remote Sensing: Theory and Applications offers the latest information on the techniques, advances and wide-ranging applications of hyperspectral remote sensing, such as forestry, agriculture, water resources, soil and geology, among others. The book also presents hyperspectral data integration with other sources, such as LiDAR, Multi-spectral data, and other remote sensing techniques. Researchers who use this resource will be able to understand and implement the technology and data in their respective fields. As such, it is a valuable reference for researchers and data analysts in remote sensing and Earth Observation fields and those in ecology, agriculture, hydrology and geology.
- Includes the theory of hyperspectral remote sensing, along with techniques and applications across a variety of disciplines
- Presents the processing, methods and techniques utilized for hyperspectral remote sensing and in-situ data collection
- Provides an overview of the state-of-the-art, including algorithms, techniques and case studies
Researchers and data analysts in Earth Observation, remote sensing, geophysics, geology, agriculture, ecology, hydrology
1. Revisiting hyperspectral remote sensing: origin, processing, applications and way forward
2. Spectral smile correction for airborne imaging spectrometers
3. Anomaly detection in hyperspectral remote sensing images
4. Atmospheric parameter retrieval and correction using hyperspectral data
5. Hyperspectral image classifications and feature selection
Section 2 Hyperspectral Remote Sensing Application in Vegetation
6. Identification of functionally distinct plants using linear spectral mixture analysis
7. Estimation of chengal trees relative abundance using coarse spatial resolution hyperspectral systems
8. Hyperspectral remote sensing in precision agriculture: present status, challenges, and future trends
9. Discriminating tropical grasses grown under different nitrogen fertilizer regimes in KwaZulu-Natal, South Africa
Section 3 Hyperspectral Remote Sensing Application in Water, Snow, Urban Research
10. Effect of contamination and adjacency factors on snow using spectroradiometer and hyperspectral images
11. Remote sensing of inland water quality: a hyperspectral perspective
12. Efficacy of hyperspectral data for monitoring and assessment of wetland ecosystem
Section 4 Hyperspectral Remote Sensing Application in Soil and Mineral Exploration
13. Spectroradiometry as a tool for monitoring soil contamination by heavy metals in a floodplain site
14. Hyperspectral remote sensing applications in soil: a review
15. Mineral exploration using hyperspectral data
16. Metrological hyperspectral image analysis through spectral differences
Section 5 Hyperspectral Remote Sensing: Multi-sensor, Fusion and Indices applications for Pollution
Detection and Other Applications
17. Improving the detection of cocoa bean fermentation-related changes using image fusion
18. Noninvasive detection of plant parasitic nematodes using hyperspectral and other remote sensing systems
19. Evaluating the performance of vegetation indices for detecting oil pollution effects on vegetation using hyperspectral (Hyperion EO-1) and multispectral (Sentinel-2A) data in the Niger Delta
20. Hyperspectral vegetation indices to detect hydrocarbon pollution
Section 6 Hyperspectral Remote Sensing: Challenges, Future Pathway for Research & Emerging Applications
21. Future perspectives and challenges in hyperspectral remote sensing
- No. of pages: 506
- Language: English
- Edition: 1
- Published: August 5, 2020
- Imprint: Elsevier
- Paperback ISBN: 9780081028940
- eBook ISBN: 9780081028957
PP
Prem Chandra Pandey
PS
Prashant K. Srivastava
HB
Heiko Balzter
BB
Bimal Bhattacharya
GP