Module CS5260-KP04, CS5260SJ14
Speech and Audio Signal Processing (SprachAu14)
Duration
1 Semester
Turnus of offer
every second semester
Credit points
4
Course of studies, specific fields and terms:
- Master CLS 2023, optional subject, Elective
- Master Robotics and Autonomous Systems 2019, optional subject, Additionally recognized elective module
- Master MES 2020, optional subject, medical engineering science
- Master Media Informatics 2020, optional subject, computer science
- Master Medical Informatics 2019, optional subject, Medical Data Science / Artificial Intelligence
- Master MES 2014, optional subject, medical engineering science
- Master CLS 2010, optional suject, computer science
- Master Medical Informatics 2014, optional subject, computer science
- Master Media Informatics 2014, optional subject, computer science
Classes and lectures:
- Speech and Audio Signal Processing (exercise, 1 SWS)
- Speech and Audio Signal Processing (lecture, 2 SWS)
Workload:
- 55 hours private studies
- 45 hours in-classroom work
- 20 hours exam preparation
Contents of teaching:
- Speech production and human hearing
- Physical models of the auditory System
- Dynamic compression
- Spectral analysis: Spectrum and cepstrum
- Spectral perception and masking
- Vocal tract models
- Linear prediction
- Coding in time and frequency domains
- Speech synthesis
- Noise reduction and echo compensation
- Source localization and spatial reproduction
- Basics of automatic speech recognition
Qualification-goals/Competencies:
- Students are able to describe the basics of human speech production and the corresponding mathematical models.
- They are able to describe the process of human auditory perception and the corresponding signal processing tools for mimicing auditory perception.
- They are able to present basic knowledge of statistical speech modeling and automatic speech recognition.
- They can describe and use signal processing methods for source separation and room-acoustic measurements.
Grading through:
- Written or oral exam as announced by the examiner
Responsible for this module:
- Prof. Dr.-Ing. Markus Kallinger
Teacher:
- Institute for Signal Processing
- Prof. Dr.-Ing. Markus Kallinger
Literature:
- L. Rabiner, B.-H. Juang : Fundamentals of Speech Recognition Upper Saddle River: Prentice Hall 1993
- J. O. Heller, J. L. Hansen, J. G. Proakis : Discrete-Time Processing of Speech Signals IEEE Press
Language:
- offered only in German
Notes:
Prerequisites for attending the module:- None
Prerequisites for the exam:
- Successful completion of assignments during the semester.
Modul exam:
- CS5260-L1: Speech and Audio Signal Processing, written or oral exam, 100% of modul grade
Mentioned in SGO MML under CS5260 (without SJ14).
Last Updated:
26.02.2026