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arxiv: 1712.10252 · v3 · pith:YG42NR2Rnew · submitted 2017-12-29 · 📡 eess.AS · cs.SD· math.ST· stat.TH

Spectral analysis for nonstationary audio

classification 📡 eess.AS cs.SDmath.STstat.TH
keywords analysisaudioapproachapproximationsfocusnonstationarysignalsacting
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A new approach for the analysis of nonstationary signals is proposed, with a focus on audio applications. Following earlier contributions, nonstationarity is modeled via stationarity-breaking operators acting on Gaussian stationary random signals. The focus is on time warping and amplitude modulation, and an approximate maximum-likelihood approach based on suitable approximations in the wavelet transform domain is developed. This paper provides theoretical analysis of the approximations, and introduces JEFAS, a corresponding estimation algorithm. The latter is tested and validated on synthetic as well as real audio signal.

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