From Compressed Sensing to Deep Learning - Tasks, Structures and Models

From Compressed Sensing to Deep Learning - Tasks, Structures and Models

IEEE Signal Processing Society via YouTube Direct link

Metasurfaces for Analog Precoding

29 of 42

29 of 42

Metasurfaces for Analog Precoding

Class Central Classrooms beta

YouTube playlists curated by Class Central.

Classroom Contents

From Compressed Sensing to Deep Learning - Tasks, Structures and Models

Automatically move to the next video in the Classroom when playback concludes

  1. 1 Intro
  2. 2 Data Redundancy
  3. 3 Digital Information
  4. 4 Analog Girl in a Digital World...
  5. 5 Standard Acquisition Systems
  6. 6 Limitations of Standard Systems
  7. 7 Task-Based Structured Acquisition
  8. 8 Advantages of Joint Design
  9. 9 Streams of Pulses Radar
  10. 10 Xampling Hardware
  11. 11 Compressed Sensing Extensions
  12. 12 Sub-Nyquist Ultrasound Imaging
  13. 13 Demo Movie
  14. 14 Deep Adaptive Beamforming
  15. 15 Channel Data Clinical Forum Improve diagnostics from channel data!
  16. 16 Sub-Nyquist and Cognitive Radar
  17. 17 Cognitive Automotive Radar
  18. 18 Multicoset Sampling
  19. 19 Xampling: Modulated Wideband Converter
  20. 20 Sub-Nyquist Cognitive Radio
  21. 21 Super Resolution Microscopy
  22. 22 SPARCOM: Super Resolution Correlation Microscopy
  23. 23 Super Resolution Contrast Enhanced Ultrasound
  24. 24 SUSHI: Sparsity-Based Ultrasound Super- resolution Hemodynamic Imaging
  25. 25 Analog to Digital Compression
  26. 26 Unification of Rate-Distortion and Sampling Theory
  27. 27 Quantizing the Samples: Source Coding Perspective
  28. 28 Optimal Sampling Rate
  29. 29 Metasurfaces for Analog Precoding
  30. 30 Antenna Selection for Imaging
  31. 31 Product Arrays
  32. 32 Spatial Sub-Sampling
  33. 33 Black-Box Deep Learning
  34. 34 Model Based Signal Processing
  35. 35 Model-Based vs. Deep Learning Model-based signal processing
  36. 36 Model-Based Deep Learning
  37. 37 Deep Unfolding
  38. 38 DUBLID: Deep Unrolling for Blind Deblurring
  39. 39 Deblurring Results
  40. 40 Super-resolution via Deep Learning
  41. 41 Data Driven Hybrid Algorithms
  42. 42 Data-Driven Factor Graph Methods

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.