Module CS5275-KP04, CS5275

Selected Topics of Signal Analysis and Enhancement (AMSAV)


Duration

1 Semester

Turnus of offer

every second semester

Credit points

4

Course of studies, specific fields and terms:

  • Master MES 2020, optional subject, medical engineering science
  • Master Medical Informatics 2019, optional subject, Medical Data Science / Artificial Intelligence
  • Master MES 2014, optional subject, medical engineering science
  • Master Medical Informatics 2014, optional subject, medical image processing
  • Master CLS 2010, optional subject, computer science
  • Master Computer Science 2012, optional subject, specialization field bioinformatics
  • Master MES 2011, advanced curriculum, imaging systems, signal and image processing
  • Master Computer Science 2012, optional subject, advanced curriculum signal and image processing
  • Master Computer Science 2012, optional subject, specialization field robotics and automation
  • Master Computer Science 2012, optional subject, advanced curriculum intelligent embedded systems

Classes and lectures:

  • Selected Topics of Signal Analysis and Enhancement (exercise, 1 SWS)
  • Selected Topics of Signal Analysis and Enhancement (lecture, 2 SWS)

Workload:

  • 20 hours exam preparation
  • 55 hours private studies
  • 45 hours in-classroom work

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:

  • Written or oral exam as announced by the examiner

Responsible for this module:

  • Prof. Dr.-Ing. Markus Kallinger

Teacher:

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:

  • German and English skills required

Notes:

Prerequisites for attending the module:
- None

Prerequisites for the exam:
- Successful completion of homework assignments during the semester (at least 50%).

Modul exam:
- CS5275-L1: Selected Topics of Signal Analysis and Enhancement, written or oral exam, 100% of modul grade

Last Updated:

08.03.2024