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Application of Two Time-Domain Convolutive Blind Source Separation Algorithms to the 2008 Signal Separation Evaluation Campaign (SiSEC) Data

机译:两种时域卷积盲源分离算法在2008年信号分离评估运动(SiSEC)数据中的应用

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摘要

This paper describes the application of two time-domain convolutive blind source separation algorithms - the scaled natural gradient algorithm [1] and the spatio-temporal FastICA algorithm with symmetric orthogonality constraints [2] - to a portion of the determined and overdetermined acoustic data sets created for the 2008 Signal Separation Evaluation Campaign (SiSEC). As the 2008 SiSEC competition provides no ground truth data and thus no a priori method for numerical performance calculation, our approach to determining overall performance is a decoding of the contents of the recorded sources used to create the data through the two algorithms used. Information about the sources themselves, such as the instrumentation and structure of the musical selections chosen, the qualities of the voices and written transcripts of what is spoken, and additional information about the signals extracted, are provided without our ever having heard the sources in isolation. A qualitative performance comparison of the two approaches is also provided.
机译:本文描述了两种时域卷积盲源分离算法(比例自然梯度算法[1]和具有对称正交性约束的时空FastICA算法[2])在部分已确定和超定的声学数据集中的应用为2008信号分离评估运动(SiSEC)创建。由于2008年SiSEC竞赛没有提供任何真实数据,因此也没有提供先验的数值性能计算方法,因此,我们确定总体性能的方法是通过所使用的两种算法对用于创建数据的记录源内容进行解码。提供了有关音源本身的信息,例如所选音乐作品的乐器和结构,语音质量和说话的文字记录,以及有关所提取信号的其他信息,而我们从来没有孤立地听到这些音源。 。还提供了两种方法的定性性能比较。

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