Buch, Englisch, 178 Seiten, Format (B × H): 156 mm x 234 mm, Gewicht: 431 g
Specific Single Class Mapping
Buch, Englisch, 178 Seiten, Format (B × H): 156 mm x 234 mm, Gewicht: 431 g
ISBN: 978-1-032-42832-1
Verlag: CRC Press
This book elaborates fuzzy machine and deep learning models for single class mapping from multi-sensor, multi-temporal remote sensing images while handling mixed pixels and noise. It also covers the ways of pre-processing and spectral dimensionality reduction of temporal data. Further, it discusses the ‘individual sample as mean’ training approach to handle heterogeneity within a class. The appendix section of the book includes case studies such as mapping crop type, forest species, and stubble burnt paddy fields.
Key features:
- Focuses on use of multi-sensor, multi-temporal data while handling spectral overlap between classes
- Discusses range of fuzzy/deep learning models capable to extract specific single class and separates noise
- Describes pre-processing while using spectral, textural, CBSI indices, and back scatter coefficient/Radar Vegetation Index (RVI)
- Discusses the role of training data to handle the heterogeneity within a class
- Supports multi-sensor and multi-temporal data processing through in-house SMIC software
- Includes case studies and practical applications for single class mapping
This book is intended for graduate/postgraduate students, research scholars, and professionals working in environmental, geography, computer sciences, remote sensing, geoinformatics, forestry, agriculture, post-disaster, urban transition studies, and other related areas.
Zielgruppe
Academic and Postgraduate
Autoren/Hrsg.
Fachgebiete
- Geowissenschaften Geologie GIS, Geoinformatik
- Technische Wissenschaften Elektronik | Nachrichtentechnik Elektronik Sensorik
- Mathematik | Informatik EDV | Informatik Informatik Theoretische Informatik
- Technische Wissenschaften Umwelttechnik | Umwelttechnologie Umwelttechnik
- Geowissenschaften Umweltwissenschaften Umwelttechnik
Weitere Infos & Material
1. Remote-Sensing Images 2. Evolution of Pixel-Based Spectral Indices 3. Multi-Sensor, Multi-Temporal Remote-Sensing 4. Training Approaches—Role of Training Data 5. Machine-Learning Models for Specific-Class Mapping 6. Learning-Based Algorithms for Specific-Class Mapping Appendix A1 Specific Single Class Mapping Case Studies Appendix A2 SMIC—Temporal Data-Processing Module for Specific-Class Mapping