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A Comparative Study of Blind Source Separation for Bioacoustics Sounds based on FastICA, PCA and NMF

机译:基于Fastica,PCA和NMF的生物声学声音盲源分离的比较研究

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Blind Source Separation (BSS) is a task of separating a set of source signals from mixed signal without (or very little information) of both the sources and the mixing process. This paper addresses the problem of BSS in bio-acoustic mixed signals. In a noisy acoustic environment, animal species recognition based on vocalization remains a challenging task. In order to robustly recognize the specific species, the source signals of interest need to be separated from the mixed signals. This separation process is a significant pre-processing step before the recognition process takes place. In this paper, three different source separation methods namely Fast Fixed-Point Independent Component Analysis algorithms (FastICA), Principal Component Analysis (PCA) and Non-Negative Matrix Factorization (NMF) are implemented. In this experiment, the mixtures of frog sound signals are used as input. The quality of separated source signals using FastICA, PCA and NMF algorithms are compared and evaluated according to BSS_EVAL toolbox metrics. These metrics consist of signal to distortion ratio (SDR), signal to interference ratio (SIR) and signal to artifacts ratio (SAR). The results show that FastICA with negentropy technique for finding a maximum non-gaussianity has the best performances in separating mixed signals.
机译:盲源分离(BSS)是将一组源信号与源和混合过程的混合信号分离一组源信号的任务。本文解决了生物声混合信号中BSS的问题。在嘈杂的声学环境中,基于发声的动物物种识别仍然是一个具有挑战性的任务。为了强大地识别特定物种,需要利益的源信号与混合信号分离。在识别过程发生之前,该分离过程是一个重要的预处理步骤。本文采用了三种不同的源分离方法,即快速定点独立分量分析算法(Fastica),主成分分析(PCA)和非负矩阵分解(NMF)。在该实验中,使用青蛙声音信号的混合物用作输入。比较使用FastICA,PCA和NMF算法的分离源信号的质量,并根据BSS_eval工具箱指标进行评估。这些度量标准由信号与失真率(SDR),信号与干扰比(SIR)和信号与伪像比(SAR)组成。结果表明,对于寻找最大非高斯度的未加入技术的Fastica具有分离混合信号的最佳性能。

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