Experimental analysis of optimal window length for independent low-rank matrix analysis

Daichi Kitamura, Nobutaka Ono, H. Saruwatari
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引用次数: 11

Abstract

In this paper, we address the blind source separation (BSS) problem and analyze the optimal window length in the short-time Fourier transform (STFT) for independent low-rank matrix analysis (ILRMA). ILRMA is a state-of-the-art BSS technique that utilizes the statistical independence between low-rank matrix spectrogram models, which are estimated by nonnegative matrix factorization. In conventional frequency-domain BSS, the modeling error of a mixing system increases when the window length is too short, and the accuracy of statistical estimation decreases when the window length is too long. Therefore, the optimal window length is determined by both the reverberation time and the number of time frames. However, unlike classical BSS methods such as ICA and IVA, ILRMA enables the full modeling of spectrograms, which may improve the robustness to a decrease in the number of frames in a longer-window case. To confirm this hypothesis, the optimal window length for ILRMA is experimentally investigated, and the difference between the performances of ILRMA and conventional BSS is discussed.
独立低秩矩阵分析的最优窗长实验分析
本文针对盲源分离(BSS)问题,分析了独立低秩矩阵分析(ILRMA)中短时傅里叶变换(STFT)的最佳窗长。ILRMA是一种最先进的BSS技术,利用非负矩阵分解估计的低秩矩阵谱图模型之间的统计独立性。在传统的频域BSS中,窗长过短会增加混合系统的建模误差,窗长过长会降低统计估计的精度。因此,最佳窗口长度由混响时间和时间帧数共同决定。然而,与经典的BSS方法(如ICA和IVA)不同,ILRMA可以对谱图进行完整的建模,这可以提高在较长窗口情况下对帧数减少的鲁棒性。为了证实这一假设,实验研究了ILRMA的最佳窗口长度,并讨论了ILRMA与传统BSS的性能差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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