IntroductionIntroduction For periodic waveforms, the duration of the waveform before it repeats is called the period of the waveformFor periodic waveforms,

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IntroductionIntroduction For periodic waveforms, the duration of the waveform before it repeats is called the period of the waveformFor periodic waveforms, the duration of the waveform before it repeats is called the period of the waveform

FrequencyFrequency the rate at which a regular vibration pattern repeats itself (frequency = 1/period)the rate at which a regular vibration pattern repeats itself (frequency = 1/period)

Frequency of a Waveform The unit for frequency is cycles/second, also called Hertz (Hz).The unit for frequency is cycles/second, also called Hertz (Hz). The frequency of a waveform is equal to the reciprocal of the period.The frequency of a waveform is equal to the reciprocal of the period. frequency = 1/period

Frequency of a Waveform Examples:Examples: frequency = 10 Hz period =.1 (1/10) seconds frequency = 100 Hz period =.01 (1/100) seconds frequency = Hz (middle C) period = (1/ 261.6) seconds

Waveform Sampling To represent waveforms on digital computers, we need to digitize or sample the waveform.To represent waveforms on digital computers, we need to digitize or sample the waveform. side effects of digitization:side effects of digitization: introduces some noiseintroduces some noise limits the maximum upper frequency rangelimits the maximum upper frequency range

Sampling Rate The sampling rate (SR) is the rate at which amplitude values are digitized from the original waveform.The sampling rate (SR) is the rate at which amplitude values are digitized from the original waveform. CD sampling rate (high-quality): SR = 44,100 samples/secondCD sampling rate (high-quality): SR = 44,100 samples/second medium-quality sampling rate: SR = 22,050 samples/secondmedium-quality sampling rate: SR = 22,050 samples/second phone sampling rate (low-quality): SR = 8,192 samples/secondphone sampling rate (low-quality): SR = 8,192 samples/second

Sampling Rate Higher sampling rates allow the waveform to be more accurately representedHigher sampling rates allow the waveform to be more accurately represented

Nyquist Theorem and Aliasing Nyquist Theorem:Nyquist Theorem: We can digitally represent only frequencies up to half the sampling rate. Example:Example: CD: SR=44,100 Hz Nyquist Frequency = SR/2 = 22,050 Hz Example:Example: SR=22,050 Hz Nyquist Frequency = SR/2 = 11,025 Hz

Nyquist Theorem and Aliasing Frequencies above Nyquist frequency "fold over" to sound like lower frequencies.Frequencies above Nyquist frequency "fold over" to sound like lower frequencies. This foldover is called aliasing.This foldover is called aliasing. Aliased frequency f in range [SR/2, SR] becomes f':Aliased frequency f in range [SR/2, SR] becomes f': f' = |f - SR|

Nyquist Theorem and Aliasing f' = |f - SR| Example:Example: SR = 20,000 HzSR = 20,000 Hz Nyquist Frequency = 10,000 HzNyquist Frequency = 10,000 Hz f = 12,000 Hz --> f' = 8,000 Hzf = 12,000 Hz --> f' = 8,000 Hz f = 18,000 Hz --> f' = 2,000 Hzf = 18,000 Hz --> f' = 2,000 Hz f = 20,000 Hz --> f' = 0 Hzf = 20,000 Hz --> f' = 0 Hz

Nyquist Theorem and Aliasing Graphical Example 1a:Graphical Example 1a: SR = 20,000 HzSR = 20,000 Hz Nyquist Frequency = 10,000 HzNyquist Frequency = 10,000 Hz f = 2,500 Hz (no aliasing)f = 2,500 Hz (no aliasing)

Nyquist Theorem and Aliasing Graphical Example 1b:Graphical Example 1b: SR = 20,000 HzSR = 20,000 Hz Nyquist Frequency = 10,000 HzNyquist Frequency = 10,000 Hz f = 5,000 Hz (no aliasing)f = 5,000 Hz (no aliasing) (left and right figures have same frequency, but have different sampling points)

Nyquist Theorem and Aliasing Graphical Example 2:Graphical Example 2: SR = 20,000 HzSR = 20,000 Hz Nyquist Frequency = 10,000 HzNyquist Frequency = 10,000 Hz f = 10,000 Hz (no aliasing)f = 10,000 Hz (no aliasing)

Nyquist Theorem and Aliasing Graphical Example 2:Graphical Example 2: BUT, if sample points fall on zero-crossings the sound is completely cancelled outBUT, if sample points fall on zero-crossings the sound is completely cancelled out

Nyquist Theorem and Aliasing Graphical Example 3:Graphical Example 3: SR = 20,000 HzSR = 20,000 Hz Nyquist Frequency = 10,000 HzNyquist Frequency = 10,000 Hz f = 12,500 Hz, f' = 7,500f = 12,500 Hz, f' = 7,500

Nyquist Theorem and Aliasing Graphical Example 3:Graphical Example 3: Fitting the simplest sine wave to the sampled points gives an aliased waveform (dotted line below):Fitting the simplest sine wave to the sampled points gives an aliased waveform (dotted line below):

Aliasing — Sound Examples [i:33] sine wave with variable frequency, SR = 22050[i:33] sine wave with variable frequency, SR = 22050

Aliasing — Sound Examples Musical examples on the Bach trumpet:Musical examples on the Bach trumpet: [i:34] SR=22050, highest frequency in music is about 7000 Hz. (no aliasing)[i:34] SR=22050, highest frequency in music is about 7000 Hz. (no aliasing) [i:35] SR=11025 (some aliasing; adds a little metallic quality)[i:35] SR=11025 (some aliasing; adds a little metallic quality) [i:36] SR=4410 (lots of aliasing; sounds like bad video game)[i:36] SR=4410 (lots of aliasing; sounds like bad video game)