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.
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Specific Single Class Mapping
Produktdetaljer
ISBN
9781000872200
Publisert
2023
Utgave
1. utgave
Utgiver
Taylor & Francis
Språk
Product language
Engelsk
Format
Product format
Digital bok