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- Title: Nanoscale Photonic Imaging
- Author(s) Tim Salditt, Alexander Egner, D. Russell Luke
- Publisher: Springer; 1st ed. 2020 edition; eBook (Creative Commons Licensed)
- License(s): Creative Commons License (CC)
- Paperback: 656 pages
- eBook PDF and ePub
- Language(s): English
- ISBN-10/ASIN: 3030344126
- ISBN-13: 978-3030344122
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This book provides a broad overview of advanced photonic methods for nanoscale visualization, as well as describing a range of fascinating in-depth studies. Introductory chapters cover the most relevant physics and basic methods.
About the Authors- Tim Salditt is currently Professor for Experimental Physics at the University of Göttingen.
- Computer and Machine Vision, Image Processing
- Applied Physics
- Neural Networks
- Computer, Digital, and Mathematical Music
- Digital Signal Processing (DSP), Sound and Imaging Processing
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