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Kathleen M. Dipple, Kaitlin L. Fair, Kathleen M Dipple et al, Panos M. Pardalos, Maciej Rysz, Arsenios Tsokas
Synthetic Aperture Radar (SAR) Data Applications
Anglais · Livre de poche
Expédition généralement dans un délai de 1 à 2 semaines (titre imprimé sur commande)
Description
This carefully curated volume presents an in-depth, state-of-the-art discussion on many applications of Synthetic Aperture Radar (SAR). Integrating interdisciplinary sciences, the book features novel ideas, quantitative methods, and research results, promising to advance computational practices and technologies within the academic and industrial communities. SAR applications employ diverse and often complex computational methods rooted in machine learning, estimation, statistical learning, inversion models, and empirical models. Current and emerging applications of SAR data for earth observation, object detection and recognition, change detection, navigation, and interference mitigation are highlighted. Cutting edge methods, with particular emphasis on machine learning, are included. Contemporary deep learning models in object detection and recognition in SAR imagery with corresponding feature extraction and training schemes are considered. State-of-the-art neural network architectures in SAR-aided navigation are compared and discussed further. Advanced empirical and machine learning models in retrieving land and ocean information - wind, wave, soil conditions, among others, are also included.
Table des matières
End-to-End ATR Leveraging Deep Learning (M. Kreucher).- Change Detection in SAR Images using Deep Learning Methods (Bovolo).- Homography Augmented Momentum Contrastive Learning for SAR Image Retrieval (M. Rysz).- Synthetic Aperture Radar Image Based Navigation Using Siamese Neural Networks (Semenov).- A Comparison of Deep Neural Network Architectures in Aircraft Detection from SAR Imagery (L. Chen).- Machine Learning Methods for SAR Interference Mitigation (Huang).- Classification of SAR Images using Compact Convolutional Neural Networks (Ahishali).- Multi-frequency Polarimetric SAR Data Analysis for Crop Type Classification using Random Forest (Mandal).- Automatic Determination of Different Soil Types via Several Machine Learning Algorithms Employing Radarsat-2 SAR Image Polarization Coefficients (E. Acar).- Ocean and coastal area information retrieval using SAR polarimetry (A. Buono).
A propos de l'auteur
Maciej Rysz is currently an assistant professor at the Department of Information Systems & Analytics at the Farmer School of Business within Miami University. Prior to joining Miami University, he was a research assistant professor at the Industrial & Systems Engineering Department at the University of Florida and served as a postdoctoral research associate under the National Research Council of the National Academies. He received his Ph.D. in Industrial Engineering with emphasis on operations research from the University of Iowa in 2014. His research areas of interest include mathematical programming, machine learning, network science and encryption.
Détails du produit
Collaboration | Kathleen M. Dipple (Editeur), Kaitlin L. Fair (Editeur), Kathleen M Dipple et al (Editeur), Panos M. Pardalos (Editeur), Maciej Rysz (Editeur), Arsenios Tsokas (Editeur) |
Edition | Springer, Berlin |
Langues | Anglais |
Format d'édition | Livre de poche |
Sortie | 20.01.2024 |
EAN | 9783031212277 |
ISBN | 978-3-0-3121227-7 |
Pages | 278 |
Dimensions | 155 mm x 15 mm x 235 mm |
Illustrations | X, 278 p. 124 illus., 91 illus. in color. |
Thème |
Springer Optimization and Its Applications |
Catégorie |
Sciences naturelles, médecine, informatique, technique
> Mathématiques
> Autres
|
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