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Bayesian source separation and localization

机译:贝叶斯源分离与定位

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Abstract: The problem of mixed signals occurs in many different contexts; one of the most familiar being acoustics. The forward problem in acoustics consists of finding the sound pressure levels at various detectors resulting from sound signals emanating from the active acoustic sources. The inverse problem consists of using the sound recorded by the detectors to separate the signals and recover the original source waveforms. In general, the inverse problem is unsolvable without additional information. This general problem is called source separation, and several techniques have been developed that utilize maximum entropy, minimum mutual information, and maximum likelihood. In previous work it has been demonstrated that these techniques can be recast in a Bayesian framework. This paper demonstrates the power of the Bayesian approach, which provides a natural means for incorporating prior information into a source model. An algorithm is developed that utilizes information regarding both the statistics of the amplitudes of the signals meted by the sources and the relative locations of the detectors. Using this prior information,the algorithm finds the most probable source behavior and configuration. Thus, the inverse problem can be solved by simultaneously performing source separation and localization. It should be noted that this algorithm is not designed to account for delay times that are often important in acoustic source separation. However, a possible application of this algorithm is in the separation of electrophysiological signals obtained using electroencephalography and magnetoencephalography. !11
机译:摘要:混合信号问题发生在许多不同的环境中。最熟悉的声学之一。声学方面的前瞻性问题包括找到各种探测器产生的声压级,这些声压级是由有源声源发出的声音信号产生的。反问题在于使用检测器记录的声音来分离信号并恢复原始的源波形。通常,如果没有其他信息,反问题是无法解决的。这个普遍的问题称为源分离,并且已经开发了几种利用最大熵,最小互信息和最大似然性的技术。在以前的工作中,已经证明可以在贝叶斯框架中重铸这些技术。本文演示了贝叶斯方法的强大功能,它为将先验信息纳入源模型提供了自然的手段。开发了一种算法,该算法利用有关源所遇到的信号幅度的统计信息以及检测器的相对位置的信息。使用此先验信息,算法可找到最可能的源行为和配置。因此,可以通过同时执行源分离和定位来解决反问题。应该注意的是,该算法并非旨在解决通常在声源分离中很重要的延迟时间。但是,该算法的可能应用是分离使用脑电图和磁脑电图获得的电生理信号。 !11

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