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  • 1
    UID:
    gbv_1687527857
    Format: 1 Online-Ressource (verschiedene Seitenzählungen) , Illustrationen, Diagramme
    Edition: Version: 20191201
    ISBN: 9780750322164 , 9780750322157
    Series Statement: IPEM–IOP Series in Physics and Engineering in Medicine and Biology
    Content: The area of machine learning, especially deep learning, has exploded in recent years, producing advances in everything from speech recognition and gaming to drug discovery. Tomographic imaging is another major area that is being transformed by machine learning, and its potential to revolutionise medical imaging is highly significant. Written by active researchers in the field, Machine Learning for Tomographic Imaging presents a unified overview of deep-learning-based tomographic imaging. Key concepts, including classic reconstruction ideas and human vision inspired insights, are introduced as a foundation for a thorough examination of artificial neural networks and deep tomographic reconstruction. X-ray CT and MRI reconstruction methods are covered in detail, and other medical imaging applications are discussed as well. An engaging and accessible style makes this book an ideal introduction for those in applied disciplines, as well as those in more theoretical disciplines who wish to learn about application contexts. Hands-on projects are also suggested, and links to open source software, working datasets, and network models are included. Part of Series in Physics and Engineering in Medicine and Biology.
    Additional Edition: ISBN 9780750322140
    Additional Edition: ISBN 9780750322171
    Additional Edition: Erscheint auch als Druck-Ausgabe ISBN 9780750322140
    Language: English
    URL: Volltext  (lizenzpflichtig)
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