Fr. 149.00

Object & Pattern Recognition In Remote Sensing - Modelling and Monitoring Environmental and Anthropogenic Objects and Change Processes

Inglese · Copertina rigida

Spedizione di solito entro 2 a 3 settimane (il titolo viene stampato sull'ordine)

Descrizione

Ulteriori informazioni










Fully automated interpretation and understanding of remotely sensed data by a computer has been a challenge for many decades, and many approaches have been developed over the years. Significant advances in knowledge-based image understanding, machine learning and artificial intelligence has led to this topic being the focus of much research in recent years.

This book highlights the different theoretical and application-oriented aspects and potential solutions to the topic of automated remote sensing data analysis. Thereby, both classical knowledge-based as well as modern machine learning-oriented concepts are described. A field such as this is specialized and dynamic and also interdisciplinary and multilayered. Written by an international team of experts, the book has therefore been split into parts dealing with the concepts and applications, and the focus is on elucidating the complementarity of different lines of research rather than providing the complete set of scientific approaches.

Part A of this book gives insight into the basic theories and concepts of feature extraction, image understanding and the respective assessment strategies as well as into geometric, radiometric and sensor-related fundamentals of remote sensing technology. Part B focuses on various scientific and practical applications of remote sensing data analysis. These range from the automatic detailed reconstruction of complex 3D environments to visual tracking of objects in image sequences as well as monitoring natural and anthropogenic long-term processes on a regional scale. Part C sketches recent trends in automatic analysis of remote sensing data.

Sommario










Part A: Methodology
Introduction
Object, data and sensor modelling
Feature extraction from images and point clouds: Fundamentals, advances and trends
A short survey on supervised classification in remote
Context-based classification
Toward a framework for quality assessment in remote sensing applications

Part B: Application
From raw 3D point clouds to semantic objects
Traffic extraction and characterization from optical remote sensing data
Object extraction in image sequences
A process-based model approach to predict future land-use changes and link biodiversity with soil erosion in Chile
Interferometric SAR Image analysis for 3D building reconstruction
Detection and classification of collapsed buildings after a strong earthquake by means of laser scanning and image analysis
A settlement process analysis in coastal Benin – confronting scarce data availability in developing countries

Part C: Conclusion
Benchmarking – a basic requirement for effective performance evaluation

Info autore










Edited by Stefan Hinz; Andreas Braun and Martin Weinmann - Foreword by Professor Christian Heipke

Riassunto

This book highlights the different theoretical and application-oriented aspects and potential solutions to the topic of automated remote sensing data analysis.

Dettagli sul prodotto

Autori Stefan Hinz
Con la collaborazione di Andreas Braun (Editore), Dr. Andreas Braun (Editore), Prof. Stefan Hinz (Editore), Stefan Hinz (Editore), Martin Weinmann (Editore), Prof. Martin Weinmann (Editore)
Editore Porto Press Ltd
 
Lingue Inglese
Formato Copertina rigida
Pubblicazione 31.08.2021
 
EAN 9781849951289
ISBN 978-1-84995-128-9
Pagine 352
Dimensioni 243 mm x 164 mm x 27 mm
Peso 918 g
Categoria Scienze naturali, medicina, informatica, tecnica > Tecnica > Elettronica, elettrotecnica, telecomunicazioni

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