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                  | [ 489MAITOASU22 ]                                         UE                                         Optimum and Adaptive Signal Processing Systems |  
                  |  |  |  | Es ist eine neuere Version 2025W dieser LV im Curriculum Master's programme Medical Engineering 2025W vorhanden. |  
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                      | Workload | Education level | Study areas | Responsible person | Hours per week | Coordinating university |  
                      | 1,5 ECTS | M1 - Master's programme 1. year | (*)Informationselektronik | Mario Huemer | 1 hpw | Johannes Kepler University Linz |  |  
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                      | Detailed information |  
                      | Original study plan | Master's programme Electronics and Information Technology (ELIT) 2023W |  
                      | Objectives | Students know and understand the fundamental parameter estimation methods, the basics of optimum filters, adaptive filters and Kalman filters qualitatively and mathematically and can apply them to in-depth problems and generalize the results obtained. |  
                      | Subject | Parameter Estimation 
Classical Methods: MVU, BLUE, ML, LS
Bayesian Methods: MAP, MMSE, LMMSE
Applications: amplitude estimation, frequency estimation, power estimation, signal extraction, system identification, data estimation
Optimum Filters
Wiener Filters
Least Squares Filters
Applications: system identification (channel estimation), inverse system identification (e.g. for channel equalization), noise reduction, linear prediction (e.g. for voice signals)
Adaptive Filters
LMS (Least Mean Squares) algorithm
RLS (Recursive Least Squares) algorithm
Kalman Filters
Standard Kalman Filter
Extended Kalman Filter
Applications
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                      | Criteria for evaluation | Home exercises have to be handed in during the semester, short oral final interview |  
                      | Methods | Examples presented by lecturer, home exercises |  
                      | Language | English |  
                      | Study material | Lecture Slides
S. Kay, Fundamentals of Statistical Signal Processing: Estimation Theory, Prentice Hall, Rhode Island 1993.
D.G. Manolakis, V.K. Ingle, S.M. Kogon, Statistical and Adaptive Signal Processing, Artech House, 2005.
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                      | Changing subject? | No |  
                      | Earlier variants | They also cover the requirements of the curriculum (from - to) 489INTEOASU17: UE Optimum and Adaptive Signal Processing Systems (2017W-2022S)
 489WSIVOASU14: UE Optimum and Adaptive Signal Processing Systems (2014W-2017S)
 
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                      | On-site course |  
                        | Maximum number of participants | 35 |  
                      | Assignment procedure | Assignment according to sequence |  |  |  |