Study Guide 2015-2016

SGN-90206 International Doctoral Seminar in Signal Processing, 1 cr

Lessons

Study type P1 P2 P3 P4 Summer Lecture times and places
Lectures

 

 
 8 h/per

 

 
Thursday 14 - 16 , TB222


Description:

This course is given by Fulbright Professor Bhaskar Rao.

Person responsible:

Jaakko Astola
Bhaskar Rao
Ioan Tabus

Assessment scale:

Numerical evaluation scale (1-5) will be used on the course

Additional information of course implementation:

In the recent decade, sparse representations have shown to be useful in many signal processing applications such as medical imaging, communications, among other applications. This course will provide an overview of the algorithms and available theoretical results in this emerging area. The course will cover the following topics: - Compressed Sensing, Sparse representations and the Sparse Signal Recovery (SSR) problem: an introduction to the SSR problem and an analysis of its properties and potential difficulties. - Matching Pursuit and recovery algorithms. The main basic matching pursuit algorithms, and regularization based algorithms will be discussed along with the performance guarantees. Recovery conditions based the dictionary coherence and the restricted isometry property will be discussed. - Bayesian Methods: Maximum Aposteriori (MAP) techniques will be discussed followed by hierarchical Bayesian methods such as Sparse Bayesian learning. - Extensions: Useful extensions such as block sparsity and the multiple measurements problem will be discussed. - Bibliographical pointers will be given for each type of problem and research topic.