Sparse time-frequency representations for polyphonic audio based on combined efficient fan-chirp transforms

被引:0
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作者
Costa M.V.M. [1 ]
Apolinário I.F. [1 ]
Biscainho L.W.P. [1 ]
机构
[1] Signals, Multimedia, and Telecommunications Lab (SMT), DEL/Poli and PEE/COPPE, Federal University of Rio de Janeiro, Rio de Janeiro, RJ
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D O I
10.17743/JAES.2019.0039
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摘要
This work presents a new strategy for obtaining a sparse time-frequency representation of polyphonic audio signals that exhibit continuous pitch changes by combining different instances of the fan-chirp transform, showing for the first time that it is applicable to effectively describe simultaneous audio sources with such characteristics. The method described blends two recent proposals: A fast implementation of the fan-chirp transform based on the structure tensor and a smart combination of time-frequency representations that explores local sparsity. Both methods are further improved in this work: now the former provides better estimates of the transforms' chirp rates by including a filtering stage, and the latter yields smoother and more continuous combinations of the representations. A set of experiments with synthetic and real audio signals illustrates the performance of the method. © 2019 Audio Engineering Society. All rights reserved.
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页码:894 / 905
页数:11
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