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                      | Detailed information | 
                     
                                
                    
                      | Original study plan | 
                      Master's programme Electronics and Information Technology (ELIT) 2022W | 
                     
                      
                    
                      | 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.
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                      | 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 | 
                      Written or oral (depending on the number of subscribed students)
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                      | Methods | 
                      Lecture using slides and blackboard, Matlab based presentations
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                      | Language | 
                      English and French | 
                     
                      
                    
                      | 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 | 
                     
                                        
                      | Further information | 
                      Until term 2022S known as: 489INTEOASU17 VL Optimum and Adaptive Signal Processing Systems until term 2017S known as: 489WSIVOASV14 VL Optimum and Adaptive Signal Processing Systems 
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                      | Earlier variants | 
                      They also cover the requirements of the curriculum (from - to) 489INTEOASV17: VL Optimum and Adaptive Signal Processing Systems (2017W-2022S) 489WSIVOASV14: VL Optimum and Adaptive Signal Processing Systems (2014W-2017S)
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