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Maximum-Likelihood and Maximum-A-Posteriori Perspectives for Blind Channel Identification on Acoustic Sensor Network Data

机译:声学传感器网络数据盲通道识别的最大似然和最大后验视角

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The emerging field of wireless acoustic sensor networks (ASN) offers promising future applications, but at the same time entails several challenges for audio signal processing. One particular task is that of identifying the acoustical system between a source of interest and the receivers in the form of acoustical transfer functions (ATF). In ASN, ATF estimation is essentially a blind problem due to unknown sensor geometry and unavailable source signal and is further complicated by noisy environments and non-persistent excitation. In this paper, we therefore put the blind identification problem into a frame-based maximum-likelihood (ML) context, before we extend this data-driven method with a-priori information to a new maximum-a-posteriori (MAP) approach. The latter shall compensate for the non-persistent excitation in ASN. We further propose a measure for assessing the accuracy of blindly identified ATF and demonstrate in computer experiments that the MAP approach is superior to ML provided that accurate estimates of the source activity are available.
机译:无线声学传感器网络(ASN)的新兴领域提供了有希望的未来应用,但同时在音频信号处理方面也带来了一些挑战。一个特定的任务是以声学传递函数(ATF)的形式识别目标源和接收器之间的声学​​系统。在ASN中,由于未知的传感器几何形状和不可用的源信号,ATF估计本质上是一个盲目的问题,并且由于嘈杂的环境和非持久性激励而变得更加复杂。因此,在本文中,我们将盲识别问题放到基于帧的最大似然(ML)上下文中,然后再将具有先验信息的数据驱动方法扩展到新的最大后验(MAP)方法。后者应补偿ASN中的非持久激励。我们进一步提出了一种评估盲目识别的ATF准确性的措施,并在计算机实验中证明了MAP方法优于ML,只要可以精确地估计源活动。

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