2008
DOI: 10.1093/ietfec/e91-a.3.791
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A Sparse Decomposition Method for Periodic Signal Mixtures

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Cited by 8 publications
(9 citation statements)
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“…First, an initial estimate of the -th period correspondence is obtained from the estimated instantaneous period in a recursive manner as (23) Next, lower and upper bounds of the -th period correspondence, namely, the boundaries of the so-called corridor of a DTW path search region, are set to (24) …”
Section: Self Dtwmentioning
confidence: 99%
“…First, an initial estimate of the -th period correspondence is obtained from the estimated instantaneous period in a recursive manner as (23) Next, lower and upper bounds of the -th period correspondence, namely, the boundaries of the so-called corridor of a DTW path search region, are set to (24) …”
Section: Self Dtwmentioning
confidence: 99%
“…This term originates in previous work on sparse decompositions of mixtures of periodic sources [6]. It favors sparse solutions in which many sources have zero excitation (i.e., all zero initial conditions, with uiτ = 0 for all τ ); we interpret such sources as inactive.…”
Section: Extension To Autoregressive Modelsmentioning
confidence: 99%
“…Our approach builds on previous work for computing sparse decompositions of mixtures of periodic sources [6]. Specifically, this earlier work considered periodic sources whose periods were integer multiples of the sampling resolution.…”
Section: Special Case: Periodic Signalsmentioning
confidence: 99%
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“…Our paper builds on recently proposed frameworks for sparse decomposition of mixed audio signals (Nakashizuka, 2008;Cho & Saul, 2009). Previous studies addressed the problem of inference in this framework: given autoregressive models of time domain waveforms for a large number K of possible sources, how to identify which k K of these sources occur in single microphone recordings?…”
Section: Introductionmentioning
confidence: 99%