Module CS5275 T
Module part: Selected Topics of Signal Analysis and Enhancement (AMSAVa)
Duration
1 Semester
Turnus of offer
each summer semester
Credit points
4
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Classes and lectures:
- Selected Topics of Signal Analysis and Enhancement (exercise, 1 SWS)
- Selected Topics of Signal Analysis and Enhancement (lecture, 2 SWS)
Workload:
- 45 hours in-classroom work
- 55 hours private studies
- 20 hours exam preparation
Contents of teaching:
- Introduction to statistical signal analysis
- Autocorrelation and spectral estimation
- Linear estimators
- Linear optimal filters
- Adaptive filters
- Multichannel signal processing, beamforming, and source separation
- Compressed sensing
- Basic concepts of multirate signal processing
- Nonlinear signal processing algorithms
- Application scenarios in auditory technology, enhancement, and restauration of one- and higher-dimensional signals, Sound-field measurement, noise reduction, deconvolution (listening-room compensation), inpainting
Qualification-goals/Competencies:
- Students are able to explain the basic elements of stochastic signal processing and optimum filtering.
- They are able to describe and apply linear estimation theory.
- Students are able to describe the concepts of adaptive signal processing.
- They are able to describe and apply the concepts of multichannel signal processing.
- They are able to describe the concept of compressed sensing.
- They are able to analyze and design multirate systems.
- Students are able to explain various applications of nonlinear and adaptive signal processing.
- They are able to create and implement linear optimum filters and nonlinear signal enhancement techniques on their own.
Grading through:
- exam type depends on main module
Responsible for this module:
- Siehe Hauptmodul
Teacher:
- Institute for Signal Processing
- Prof. Dr.-Ing. Markus Kallinger
Literature:
- A. Mertins : Signaltheorie: Grundlagen der Signalbeschreibung, Filterbänke, Wavelets, Zeit-Frequenz-Analyse, Parameter- und Signalschätzung Springer-Vieweg, 3. Auflage, 2013
- S. Haykin : Adaptive Filter Theory Prentice Hall, 1995
Language:
- offered only in German
Notes:
(Part of modules CS4290, CS4510, CS5400, RO4290-KP04, CS5274-KP08)(Is equal to CS5275)
For Details see main module.
Prerequisites for attending the module:
- None
Prerequisites for the exam:
- Successful completion of homework assignments during the semester (at least 50%).
Modul exam in Main module:
- CS5275-L1: Selected Topics of Signal Analysis and Enhancement, written or oral exam, 100% of modul grade
Last Updated:
08.03.2024