From Compressed Sensing to Deep Learning - Tasks, Structures and Models
IEEE Signal Processing Society via YouTube
Overview
Syllabus
Intro
Data Redundancy
Digital Information
Analog Girl in a Digital World...
Standard Acquisition Systems
Limitations of Standard Systems
Task-Based Structured Acquisition
Advantages of Joint Design
Streams of Pulses Radar
Xampling Hardware
Compressed Sensing Extensions
Sub-Nyquist Ultrasound Imaging
Demo Movie
Deep Adaptive Beamforming
Channel Data Clinical Forum Improve diagnostics from channel data!
Sub-Nyquist and Cognitive Radar
Cognitive Automotive Radar
Multicoset Sampling
Xampling: Modulated Wideband Converter
Sub-Nyquist Cognitive Radio
Super Resolution Microscopy
SPARCOM: Super Resolution Correlation Microscopy
Super Resolution Contrast Enhanced Ultrasound
SUSHI: Sparsity-Based Ultrasound Super- resolution Hemodynamic Imaging
Analog to Digital Compression
Unification of Rate-Distortion and Sampling Theory
Quantizing the Samples: Source Coding Perspective
Optimal Sampling Rate
Metasurfaces for Analog Precoding
Antenna Selection for Imaging
Product Arrays
Spatial Sub-Sampling
Black-Box Deep Learning
Model Based Signal Processing
Model-Based vs. Deep Learning Model-based signal processing
Model-Based Deep Learning
Deep Unfolding
DUBLID: Deep Unrolling for Blind Deblurring
Deblurring Results
Super-resolution via Deep Learning
Data Driven Hybrid Algorithms
Data-Driven Factor Graph Methods
Taught by
IEEE Signal Processing Society