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

Intro

1 of 42

1 of 42

Intro

Class Central Classrooms beta

YouTube videos 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.