The course is focused on solving a sparse solution of a linear under-determined system with the trade-off
between complexity and performance. A brief outline of the course contents is as follows.
(1) The key problem of solving a linear under-determined system and sparsity
(2) Pursuit algorithms – Design and their theoretical performance guarantees
(3) From exact to approximate solutions
(4) Iterative-shrinkage algorithms
(5) Towards average performance analysis
(6) The Dantzig-Selector algorithm
(7) MAP versus MMSE estimation
FEO3310 Sparse Signal Processing 8.0 credits

Information per course offering
Course offerings are missing for current or upcoming semesters.
Course syllabus as PDF
Please note: all information from the Course syllabus is available on this page in an accessible format.
Course syllabus FEO3310 (Autumn 2011–)Content and learning outcomes
Course contents
Intended learning outcomes
After the course, the students should be able to :
(1) Understand the key concept of sparsity in nature that relates to the fact that most of the signals
and systems have low degrees of freedom and then identify relevant research problems.
(2) Formulate and use a linear model setup for describing a sparse signal and system setup.
(3) Apply algorithmic tools to solve for a sparse solution such that overall system efficiency
increased.
(4) Design and compare several algorithms applied to a particular signal and system setup, using
appropriate simulation platform and analytical tools.
(5) Contribute to the frontier research in the area.
Literature and preparations
Specific prerequisites
Literature
Michael Elad, “Sparse and Redundant Representations: From Theory to Applications in Signal and Image
Precessing” 2010, Springer
Examination and completion
Grading scale
Examination
Based on recommendation from KTH’s coordinator for disabilities, the examiner will decide how to adapt an examination for students with documented disability.
The examiner may apply another examination format when re-examining individual students.
If the course is discontinued, students may request to be examined during the following two academic years.
Other requirements for final grade
The evaluation criteria are the presentation of research papers and project assignments. Each paper presentation
will be graded according to (approximate thresholds):
-1 : less that 20% of the paper is understood correctly
0 : between 20 % to 40% of the paper is understood correctly
1 : between 40% to 70% of the paper is understood correctly
2 : more than 70% of the paper is understood correctly
There are three paper presentations (two in a group as a technical note preparation and one individually as a
paper presentation) and the threshold for receiving a pass-grade is four points.
In addition, the student has to successfully complete two project assignments. The project assignments will
mainly focus on implementing algorithms and their use in practice. Each project assignment will be graded
according to (approximate thresholds):
-1 : less that 20% of the project executed
0 : between 20 % to 40% of the project executed
1 : between 40% to 70% of the project executed
2 : more than 70% of the project executed
The threshold for receiving a pass-grade is three points.
Overall, for achieving a pass-grade, the threshold is seven points out of ten points. If required, a final
examination of five hours may be arranged.
Examiner
Ethical approach
- All members of a group are responsible for the group's work.
- In any assessment, every student shall honestly disclose any help received and sources used.
- In an oral assessment, every student shall be able to present and answer questions about the entire assignment and solution.