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Published byAlfred Watts Modified over 9 years ago
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Pitch Tracking MUMT 611 Philippe Zaborowski February 2005
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Pitch Tracking Goal is to track the fundamental Vast area of research mostly focused on voice coding Dozens of different algorithms All algorithms have limitations None are ideal
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Technical Difficulties: Piano
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Technical Difficulties: E. Bass
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Algorithm Classification Time Domain Spectral Domain Combined Time/Spectral Domain Neural Networks
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Time Domain Common Features: Analysis performed on sample basis instead of buffered intervals No transformation needed Cheap on computation Common Drawbacks: Not suited for signals where the fundamental is weak and the harmonics are strong DC offset can be a problem
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Time Domain Threshold Crossing (zero crossing)
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Time Domain Dolansky (1954)
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Time Domain Rabiner and Gold (1969)
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Time Domain Autocorrelation (Rabiner 1977)
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Time Domain Average Magnitude Difference Function (Ross 1974)
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Time Domain Cooper and Ng (1994)
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Time/Spectral Domain Least-Square (Choi 1995) Combines the reliability of frequency-domain with high resolution of time-domain Able to analyze shorter signal segments Suitable for real-time Uses constant Q tranform
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Spectral Domain Common Features: Transformation from time to spectral domain is computationally intensive Superior control and analysis of formants Common Drawbacks: Simple study of spectrum not enough DFT based algorithms use equally spaced bins
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Spectral Domain FFT with different harmonic analysis: Maximum of FFT (Division Method) Piszczalski and Galler (1979) Harmonic Product (Schroeder 1968)
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Spectral Domain Constant Q transform (Brown and Puckette 1992)
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Spectral Domain Cepstrum (Andrews 1990)
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Conclusion Spectral Domain: Give good results Require a demanding analysis of spectrum Time Domain: Generally inferior to spectral domain Some have comparable results with less computation
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