lecture05: Filters
This lecture is concerned with filters, in particular LTI
(Linear, Time-Invariant) filters, which we can write as a
convolution. We also introduce the z-transforms and the analogy
between filters and systems.
Topics covered
- Filters
- Possible filter properties
- Linear Filters
- Linear Time Invariant Filters
- Convolution
- Circular convolution
- Example
- Example DFT of circular convolution
- Linear Time Invariant Causal Filters
- Impulse response
- Memory
- FIR example: Moving Average
- FIR example: difference
- Example of IIR filter: EWMA
- Transfer function
- Types of filters
- Example: MA {\fontsize{14pt{14pt}\selectfont $ y(n) = \frac{1}{2N+1} \sum_{i=-N}^{N} x(n-i)$}}
- Example: difference {\fontsize{14pt{14pt}\selectfont $ y(n) = x(n) - x(n-1)$}}
- Example: EWMA {\fontsize{14pt{14pt}\selectfont $y(n) = a y(n-1) + (1-a) x(n) $}}
- What do they sound like?
- Why does {\tt He make your voice funny?}
- Financial data example
- Better filters
- Terminology
- Example filter comparison
- Filtering in the frequency domain
- Perfect filters and Gibb's phenomena
- Filtering in the time domain
- Z-transforms
- Z-transform and convolutions
- Inverse Z-transform
- More general IIR filters
- ARMA filters
- Example: EWMA
- Example: EWMA impulse response
- Filter invertibility
- Some simple filters
- Application: Dolby noise reduction
- An applications: denoising
- Example
- Example 2
- An applications: detect level changes
- Example
- Systems
- System properties
- Linear systems
- Linear time-invariant systems
- Non-linear systems
- Resonance
- Tacoma narrows bridge