Record Display for the EPA National Library Catalog

RECORD NUMBER: 2 OF 27

Main Title AUTOMATIC DETECTION ALGORITHMS OF OIL SPILL IN RADAR IMAGES [electronic resource].
Type EBOOK
Author Marghany, Maged.
Publisher CRC PRESS,
Year Published 2019
Call Number TD427.P4
ISBN 9780429629099; 0429629095; 9780429052965; 0429052960; 9780429627453; 0429627459; 9780429625817; 0429625812
Subjects SCIENCE / Life Sciences / General ; TECHNOLOGY / Engineering / Chemical & BioChemical ; Oil spills--Remote sensing ; Marine pollution--Remote sensing ; Synthetic aperture radar
Internet Access
Description Access URL
Taylor & Francis https://www.taylorfrancis.com/books/9780429052965
Collation 1 online resource
Notes
OCLC-licensed vendor bibliographic record.
Due to license restrictions, this resource is available to EPA employees and authorized contractors only
Contents Notes
Synthetic Aperture Radar Automatic Detection Algorithms (SARADA) for Oil Spills conveys the pivotal tool required to fully comprehend the advanced algorithms in radar monitoring and detection of oil spills, particularly quantum computing and algorithms as a keystone to comprehending theories and algorithms behind radar imaging and detection of marine pollution. Bridging the gap between modern quantum mechanics and computing detection algorithms of oil spills, this book contains precise theories and techniques for automatic identification of oil spills from SAR measurements. Based on modern quantum physics, the book also includes the novel theory on radar imaging mechanism of oil spills. With the use of precise quantum simulation of trajectory movements of oil spills using a sequence of radar images, this book demonstrates the use of SARADA for contamination by oil spills as a promising novel technique. Key Features: Introduces basic concepts of a radar remote sensing. Fills a gap in the knowledge base of quantum theory and microwave remote sensing. Discusses the important aspects of oil spill imaging in radar data in relation to the quantum theory. Provides recent developments and progresses of automatic detection algorithms of oil spill from radar data. Presents 2-D oil spill radar data in 4-D images.