The course (self-standing module) aims to introduce the most frequent signal processing algorithms implemented in embedded systems. The course thus focuses on processing time domain waveforms representing physical processes.
It contains 6 parts with 16 lecture videos together with their handouts, and 3 Matlab exercises. The modules cover the following topics:
- Introduction to embedded systems (architecture, components, role of signal processing)
- Filtering: linear filtering (FIR and IIR filters, design methods, properties, realization considerations)
- Spectral analysis: Discrete Fourier Transform (interpretation, properties, coherent/noncoherent sampling, different forms).
- Increasing the accuracy and precision of measurements in embedded systems
- Sensor fusion: complementary filtering, Kalman filter for sensor fusion
- Inverse filtering: numerical correction of static and dynamic distortion
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