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      A general framework for online audio source separation

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          Abstract

          We consider the problem of online audio source separation. Existing algorithms adopt either a sliding block approach or a stochastic gradient approach, which is faster but less accurate. Also, they rely either on spatial cues or on spectral cues and cannot separate certain mixtures. In this paper, we design a general online audio source separation framework that combines both approaches and both types of cues. The model parameters are estimated in the Maximum Likelihood (ML) sense using a Generalised Expectation Maximisation (GEM) algorithm with multiplicative updates. The separation performance is evaluated as a function of the block size and the step size and compared to that of an offline algorithm.

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          Under-Determined Reverberant Audio Source Separation Using a Full-Rank Spatial Covariance Model

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            First Stereo Audio Source Separation Evaluation Campaign: Data, Algorithms and Results

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              Online blind source separation based on time-frequency sparseness

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                Author and article information

                Journal
                28 December 2011
                Article
                1112.6178
                f9becbc4-487b-44ac-85ef-5d58d4a8d66d

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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                Custom metadata
                International conference on Latente Variable Analysis and Signal Separation (2012)
                cs.SD
                ccsd

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