利用聚类声源模型确定多通道盲声源分离技术

Jianyu Wang, Shanzheng Guan
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摘要

独立低阶矩阵分析(ILRMA)方法是多声道盲音频源分离的主要技术。它利用非负矩阵因式分解(NMF)和非负同义分解(NCPD)来建立音源参数模型。虽然它能有效捕捉声源的低秩结构,但 NMF 模型忽略了信道间的依赖性。另一方面,NCPD 保留了内在结构,但缺乏可解释的潜在因素,这使得将先验信息作为约束条件具有挑战性。为了解决这些局限性,我们引入了基于非负块项分解(NBTD)的聚类源模型。该模型将块定义为向量(聚类)和矩阵(用于频谱结构建模)的外积,提供了可解释的潜在向量。实验结果表明,我们提出的方法在消声条件下优于 ILRMA 及其扩展方法,在模拟混响环境下优于原始的 ILRMA 方法。
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Determined Multichannel Blind Source Separation with Clustered Source Model
The independent low-rank matrix analysis (ILRMA) method stands out as a prominent technique for multichannel blind audio source separation. It leverages nonnegative matrix factorization (NMF) and nonnegative canonical polyadic decomposition (NCPD) to model source parameters. While it effectively captures the low-rank structure of sources, the NMF model overlooks inter-channel dependencies. On the other hand, NCPD preserves intrinsic structure but lacks interpretable latent factors, making it challenging to incorporate prior information as constraints. To address these limitations, we introduce a clustered source model based on nonnegative block-term decomposition (NBTD). This model defines blocks as outer products of vectors (clusters) and matrices (for spectral structure modeling), offering interpretable latent vectors. Moreover, it enables straightforward integration of orthogonality constraints to ensure independence among source images. Experimental results demonstrate that our proposed method outperforms ILRMA and its extensions in anechoic conditions and surpasses the original ILRMA in simulated reverberant environments.
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