SGN-2606 STATISTICAL SIGNAL PROCESSING, 5 cr
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Courses persons responsible
Heikki Huttunen
Lecturers
Heikki Huttunen
Lecturetimes and places
Per IV,V: Tuesday 12 - 14, TB215
Implementations
Period 1 | Period 2 | Period 3 | Period 4 | Period 5 | Summer | |
Lecture | - | - | - | 2 h/week | 2 h/week | - |
Exercise | - | - | - | 2 h/week | 2 h/week | - |
Assignment | - | - | - | - | 15 h/per | - |
Exam |
Objectives
After passing this course the student will understand what estimation is,
when it is needed and will also be familiar with several basic estimators and optimal filters.
Content
Content | Core content | Complementary knowledge | Specialist knowledge |
1. | Basic concepts of estimation. |   | |
2. | Estimation of deterministic parameters. |   | |
3. | Estimation of random parameters. |   | |
4. | Optimal filtering. |   |
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
Additional information related to course
Correspondence of content
8001403 Statistical signal processing
Last modified | 30.01.2006 |
Modified by | Antti Niemistö |