Adaptive signal processing

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This is a grouped Moodle course. It consists of several separate courses that share learning materials, assignments, tests etc. Below you can see information about the individual courses that make up this Moodle course.
Adaptive signal processing (Main course) B2M31ADA
Credits 5
Semesters Winter
Completion Assessment + Examination
Language of teaching Czech
Extent of teaching 2P+2C
Annotation
This course provides a basic discourse on adaptive algorithms for filtering, decorrelation, separation and beamforming. The course explains adaptive algorithms for estimation and prediction, including analysis, implementation and practical applications. Next, it describes the algorithms for adaptive decorrelation and separation of multidimensional signals. Last, the course provides analysis of adaptive beamforming techniques.
Study targets
This course aims to provides the basic knowledge in the area of algorithms for filtering, decorrelation, separation and beamforming.
Course outlines
1. Block algorithms for estimation
2. Block algorithms for prediction
3. LMS and RLS algorithms and their use for estimation and prediction
4. Convergence of LMS and RLS algorithms
5. Structures for implementation of adaptive filters
6. Use of adaptive algorithms for signal compression
7. Use of adaptive algorithms for noise suppression
8. Kalman filters
9. Grid filters and particle filters
10. Adaptive algorithms for decorrelation of multidimensional signals
11. Adaptive algorithms for separation of multidimensional signals
12. Adaptive beamforming - LCMV and MVDR algorithms
13. Adaptive beamforming - MUSIC algorithm
14. Reserved
Exercises outlines
1. Implementation of block algorithms for estimation
2. Implementation of block algorithms for prediction
3. Implementation of LMS and RLS algorithms
4. Convergence of LMS and RLS algorithms
5. Comparisoin of structures for implementation of adaptive filters
6. Vocoder
7. Adaptive supression of narrowband interference.
8. Application of Kalman filters
9. Use of grid filters and particle filters
10. Implementation of algorithms for decorrelation of multidimensional signals
11. Implementation of algorithms for separation of multidimensional signals
12. Application of LCMV and MVDR algorithms
13. Application of MUSIC algorithm
14. Reserved
Literature
Sayed, A.H., Adaptive Filters, Wiley-IEEE Press, 2008.
Bellanger, M.B., Adaptive Digital Filters, Marcel Dekker, NY 2001.
Hyvarinen, A, Karhunen, J, Oja, E. Independent Component Analysis, John Wiley & Sons, 2004.
Requirements
The knowledge of basic digital signal processing techniques - primarily the spectral analysis and non-adaptive linear filtering. Ability to use Matlab.
Adaptive signal processing BE2M31ADA
Credits 5
Semesters Winter
Completion Assessment + Examination
Language of teaching English
Extent of teaching 2p+2c
Annotation
This course provides a basic discourse on adaptive algorithms for filtering, decorrelation, separation and beamforming. The course explains adaptive algorithms for estimation and prediction, including analysis, implementation and practical applications. Next, it describes the algorithms for adaptive decorrelation and separation of multidimensional signals. Last, the course provides analysis of adaptive beamforming techniques.
Study targets
This course aims to provides the basic knowledge in the area of algorithms for filtering, decorrelation, separation and beamforming.
Course outlines
1. Block algorithms for estimation
2. Block algorithms for prediction
3. LMS and RLS algorithms and their use for estimation and prediction
4. Convergence of LMS and RLS algorithms
5. Structures for implementation of adaptive filters
6. Use of adaptive algorithms for signal compression
7. Use of adaptive algorithms for noise suppression
8. Kalman filters
9. Grid filters and particle filters
10. Adaptive algorithms for decorrelation of multidimensional signals
11. Adaptive algorithms for separation of multidimensional signals
12. Adaptive beamforming - LCMV and MVDR algorithms
13. Adaptive beamforming - MUSIC algorithm
14. Reserved
Exercises outlines
1. Implementation of block algorithms for estimation
2. Implementation of block algorithms for prediction
3. Implementation of LMS and RLS algorithms
4. Convergence of LMS and RLS algorithms
5. Comparisoin of structures for implementation of adaptive filters
6. Vocoder
7. Adaptive supression of narrowband interference.
8. Application of Kalman filters
9. Use of grid filters and particle filters
10. Implementation of algorithms for decorrelation of multidimensional signals
11. Implementation of algorithms for separation of multidimensional signals
12. Application of LCMV and MVDR algorithms
13. Application of MUSIC algorithm
14. Reserved
Literature
Sayed, A.H., Adaptive Filters, Wiley-IEEE Press, 2008.
Bellanger, M.B., Adaptive Digital Filters, Marcel Dekker, NY 2001.
Hyvarinen, A, Karhunen, J, Oja, E. Independent Component Analysis, John Wiley & Sons, 2004.
Requirements
The knowledge of basic digital signal processing techniques - primarily the spectral analysis and non-adaptive linear filtering. Ability to use Matlab.
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