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bokomslag Deep Learning for Synthetic Aperture Radar Remote Sensing
Data & IT

Deep Learning for Synthetic Aperture Radar Remote Sensing

Michael Schmitt Ronny H?Nsch Ronny Hänsch

Pocket

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  • 290 sidor
  • 2026
Deep Learning for Synthetic Aperture Radar Remote Sensing delves into the transformative synergy between synthetic aperture radar (SAR) and cutting-edge machine learning techniques. Traditionally rooted in signal processing, SAR's active imaging capabilities rise above optical limitations, offering resilience to environmental factors like cloud cover. This book showcases how machine learning augments every stage of SAR image processing, from raw data refinement to advanced information extraction. Through comprehensive coverage of acquisition modes and processing methodologies, including polarimetry and interferometry, this book equips readers with the tools to harness SAR's full potential. Aiming to further enhance remote sensing imaging, it serves as a vital resource for those seeking to integrate SAR data seamlessly into the modern machine learning landscape. Deep Learning for Synthetic Aperture Radar Remote Sensing addresses a critical gap in the intersection of SAR technology and machine learning, offering a pioneering roadmap for researchers and practitioners alike. With its emphasis on modern techniques, it serves as a catalyst for unlocking SAR's untapped potential and shaping the future of Earth observation.

  • Combines Synthetic Aperture Radar and Machine Learning/Deep Learning, addressing a highly innovative field
  • Covers the complete life-cycle of an SAR image from creation over enhancement to analysis instead of focusing on only one aspect
  • Provides a holistic view of the application of DL to SAR, addressing the unique properties and challenges of SAR
  • Författare: Michael Schmitt, Ronny H?Nsch, Ronny Hänsch
  • Format: Pocket/Paperback
  • ISBN: 9780443363443
  • Språk: Engelska
  • Antal sidor: 290
  • Utgivningsdatum: 2026-01-01
  • Förlag: Elsevier Science