音频的近场定位:最大似然方法

J. Jensen, M. G. Christensen
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引用次数: 3

摘要

二十多年来,利用麦克风阵列定位音源一直是一个重要的研究问题。许多传统的解决问题的方法都是基于一个两阶段的过程:首先,估计关于音频源的信息,如麦克风之间的到达时间差(TDOAs)和到达增益比(GROAs),其次,利用这些知识来定位音频源。这些方法通常具有较低的计算复杂度,但这是以有限的估计精度为代价的。因此,我们提出了一种新的定位方法,其中使用由源位置确定的tdoa和groa对所需信号进行建模。这有助于在高斯白噪声假设下推导出适用于近场和远场场景的单阶段最大似然方法。仿真结果表明,该方法在统计上是有效的,并且在大多数情况下都优于最先进的估计方法,包括合成数据和真实数据。
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Near-field localization of audio: A maximum likelihood approach
Localization of audio sources using microphone arrays has been an important research problem for more than two decades. Many traditional methods for solving the problem are based on a two-stage procedure: first, information about the audio source, such as time differences-of-arrival (TDOAs) and gain ratios-of-arrival (GROAs) between microphones is estimated, and, second, this knowledge is used to localize the audio source. These methods often have a low computational complexity, but this comes at the cost of a limited estimation accuracy. Therefore, we propose a new localization approach, where the desired signal is modeled using TDOAs and GROAs, which are determined by the source location. This facilitates the derivation of one-stage, maximum likelihood methods under a white Gaussian noise assumption that is applicable in both near- and far-field scenarios. Simulations show that the proposed method is statistically efficient and outperforms state-of-the-art estimators in most scenarios, involving both synthetic and real data.
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