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On the Use of Deep Mask Estimation Module for Neural Source Separation Systems

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arxiv 2206.07347 v1 pith:7NDMPLTS submitted 2022-06-15 cs.SD eess.AS

On the Use of Deep Mask Estimation Module for Neural Source Separation Systems

classification cs.SD eess.AS
keywords estimationmaskmoduledeepseparationsourcemasksneural
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Most of the recent neural source separation systems rely on a masking-based pipeline where a set of multiplicative masks are estimated from and applied to a signal representation of the input mixture. The estimation of such masks, in almost all network architectures, is done by a single layer followed by an optional nonlinear activation function. However, recent literatures have investigated the use of a deep mask estimation module and observed performance improvement compared to a shallow mask estimation module. In this paper, we analyze the role of such deeper mask estimation module by connecting it to a recently proposed unsupervised source separation method, and empirically show that the deep mask estimation module is an efficient approximation of the so-called overseparation-grouping paradigm with the conventional shallow mask estimation layers.

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