SGN-2606 STATISTICAL SIGNAL PROCESSING, 5 cr
|
Courses persons responsible
Heikki Huttunen
Lecturers
Heikki Huttunen
Objectives
After passing this course the student will understand what estimation is,
and how the methods can be applied in signal processing.
Content
Content | Core content | Complementary knowledge | Specialist knowledge |
1. | Basic concepts of estimation. What is an estimator and how to compare their performance. Cramer-Rao lower bound for estimator variance. |   | |
2. | Classical tools for estimation of a deterministic parameter: minimum variance unbiased estimator (MVUE), sufficient statistic, best linear unbiased estimator (BLUE), least squares estimator. |   | |
3. | Estimation of nondeterministic parameters: the Bayesian approach. |   | |
4. | Practical signal processing applications will also be considered in each section. |   |
Requirements for completing the course
Final examination, weekly exercises and an assignment.
Evaluation criteria for the course
Study material
Type | Name | Auhor | ISBN | URL | Edition, availability... | Exam material | Language |
Book | "Fundamentals of Statistical Signal Processing - Estimation Theory, Estimation Theory" | Kay S. M. | 0-13-042268-1 | Prentice Hall, 1993 | Yes | English | |
Lecture slides | "Statistical Signal Processing" | Yes | English |
Prerequisites
Code | Course | Credits | M/R |
MAT-33310 | MAT-33310 Statistics | 3-6 | Recommendable |
SGN-1200 | SGN-1200 Signal Processing Methods | 4 | Recommendable |
Prequisite relations (Sign up to TUT Intranet required)
Additional information about prerequisites
Basic tools of statistics and general knowledge of random variables are required.
Remarks
Distance learning
- In information distribution via homepage, newsgroups or mailing lists, e.g. current issues, timetables
- In compiling exercise, group or laboratory work
- In distributing and/or returning exercise work, material etc
- Contact teaching: 35 %
- Distance learning: 0 %
- Proportion of a student's independent study: 65 %
Scaling
Methods of instruction | Hours |
Lectures | 48 |
Exercises | 66 |
Assignments | 15 |
Other scaled | Hours |
Exam/midterm exam | 3 |
Total sum | 132 |
Principles and starting points related to the instruction and learning of the course
Correspondence of content
8001403 Statistical signal processing
Last modified | 30.01.2007 |
Modified by | Sari Peltonen |