ICASSP Multimedia file Title : Periodic Signal Extraction with Global Amplitude and Phase Modulation for Music Signal Decomposition Title : Periodic Signal.

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Presentation transcript:

ICASSP Multimedia file Title : Periodic Signal Extraction with Global Amplitude and Phase Modulation for Music Signal Decomposition Title : Periodic Signal Extraction with Global Amplitude and Phase Modulation for Music Signal Decomposition Authors : Mahdi Triki,Dirk T.M. Slock Eurecom Institute, Sophia Antipolis, France Eurecom Institute, Sophia Antipolis, France Paper number : 2866

Introduction This presentation is performed to demonstrate the results of the separation of a mixture of musical notes using the method proposed in the paper. This presentation is performed to demonstrate the results of the separation of a mixture of musical notes using the method proposed in the paper.

Input Signal Input signal: Input signal: –Duration : 1 second –Sampling rate : Hz –Number of bits per sample : 16 bits –SNR = 26 dB

Input Signal (2) Input signal: a synthesized mixture of three notes: Input signal: a synthesized mixture of three notes: –Note 1 : pitch=82Hz –Note 2 : pitch=92Hz –Note 3 : pitch=116Hz

Input signal (3)

Separation results Original signal Resynthesized Extracted signal Note 1 Note 2 Note 3

Note 1 extraction Amp. and freq modulation Analysis

Note 1 extraction (2) Spectrum Analysis Resulting approximation SNR= 8.4 dB Resulting approximation SNR= 8.4 dB

Note 1 extraction (3) Spectrum analysis for steady-state portion only Resulting approximation SNR= 17 dB Resulting approximation SNR= 17 dB

Note 2 extraction Amp. and freq modulation Analysis

Note 2 extraction (2) Spectrum Analysis Resulting approximation SNR= 5.8 dB Resulting approximation SNR= 5.8 dB

Note 2 extraction (3) Spectrum analysis for steady-state portion only Resulting approximation SNR= 10.3 dB Resulting approximation SNR= 10.3 dB

Note 3 extraction Amp. and freq modulation Analysis

Note 3 extraction (2) Spectrum Analysis Resulting approximation SNR= 6.18 dB Resulting approximation SNR= 6.18 dB

Note 3 extraction (3) Spectrum analysis for steady-state portion only Resulting approximation SNR= 9.66 dB Resulting approximation SNR= 9.66 dB