Digital Signal Processing
Module ID
Υ403
Semester
4
Hours/Week - ECTS
5 – 5
Karetsos George
Professor
Learning Outcomes
Students upon completion of the course will have gained a good understanding and knowledge of the main ideas, algorithms, and tools in the area of digital signal processing and will be able to:
- Implement sampling of continuous time signals and reconstruct them from their samples by choosing appropriate parameters and functions.
- Change the sampling rate of discrete-time signals, avoiding folding effects.
- Recognize the basic signals and categories of discrete-time systems.
- Analyze signals and systems in the discrete time domain.
- Compute the frequency response of linear and time-invariant discrete-time systems, implement decomposition into a minimum-phase system and an all-pass system, and describe generalized linear-phase systems.
- Implement discrete-time systems using various structures.
- Design filters with an infinite or finite impulse response using appropriate methods.
- Understand the importance of the discrete Fourier transform and algorithms for its fast computation.
- Analyze discrete-time signals in the frequency domain, using the windowing method as well as the time-dependent discrete Fourier transform, and reconstruct the signal with the overlap-sum algorithm.
- Analyze and implement systems in the field of Z transformation.
- Understand and/or implement code in the Matlab computing environment to achieve the above.
Indicative Module Content
- Introduction to Digital Signal Processing
- Discrete-time Signals
- Discrete-time Systems
- Discrete Fourier Transform and applications
- Frequency response
- Frequency Domain Representation of Discrete-time LTI Systems
- Analog to digital conversion
- Z-transform
- Digital filter Design