Sampled and discretized of short-time Fourier transform and non-negative matrix factorization: the single-channel source separation case

J. Hendry, Isnan Nur Rifai, Yoga Mileniandi
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引用次数: 1

Abstract

The Short-time Fourier transform (STFT) is a popular time-frequency representation in many source separation problems. In this work, the sampled and discretized version of Discrete Gabor Transform (DGT) is proposed to replace STFT within the single-channel source separation problem of the Non-negative Matrix Factorization (NMF) framework. The result shows that NMF-DGT is better than NMF-STFT according to Signal-to-Interference Ratio (SIR), Signal-to-Artifact Ratio (SAR), and Signal-to-Distortion Ratio (SDR). In the supervised scheme, NMF-DGT has a SIR of 18.60 dB compared to 16.24 dB in NMF-STFT, SAR of 13.77 dB to 13.69 dB, and SDR of 12.45 dB to 11.16 dB. In the unsupervised scheme, NMF-DGT has a SIR of 0.40 dB compared to 0.27 dB by NMF-STFT, SAR of -10.21 dB to -10.36 dB, and SDR of -15.01 dB to -15.23 dB.
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短时傅立叶变换和非负矩阵分解的采样和离散化:单通道源分离情况
短时傅立叶变换(STFT)是许多源分离问题中流行的时频表示。在这项工作中,提出了离散Gabor变换(DGT)的采样和离散版本,以取代非负矩阵分解(NMF)框架的单通道源分离问题中的STFT。结果表明,NMF-DGT在信干比(SIR)、信伪比(SAR)和信失真比(SDR)方面优于NMF-STFT。在监督方案中,NMF-DGT的SIR为18.60 dB,而NMF-STFT为16.24 dB,SAR为13.77 dB至13.69 dB,SDR为12.45 dB至11.16 dB。在无监督方案中,NMF-DGT的SIR为0.40 dB,而NMF-STFT为0.27 dB,SAR为-10.21 dB至-10.36 dB,SDR为-15.01 dB至-15.23 dB。
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