Minimum mutual information beamforming for simultaneous active speakers

K. Kumatani, U. Mayer, Tobias Gehrig, Emilian Stoimenov, J. McDonough, Matthias Wölfel
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引用次数: 6

Abstract

In this work, we address an acoustic beamforming application where two speakers are simultaneously active. We construct one subband domain beamformer in generalized sidelobe canceller (GSC) configuration for each source. In contrast to normal practice, we then jointly adjust the active weight vectors of both GSCs to obtain two output signals with minimum mutual information (MMI). In order to calculate the mutual information of the complex subband snapshots, we consider four probability density functions (pdfs), namely the Gaussian, Laplace, K0 and lceil pdfs. The latter three belong to the class of super-Gaussian density functions that are typically used in independent component analysis as opposed to conventional beam-forming. We demonstrate the effectiveness of our proposed technique through a series of far-field automatic speech recognition experiments on data from the PASCAL Speech Separation Challenge. In the experiments, the delay-and-sum beamformer achieved a word error rate (WER) of 70.4 %. The MMI beamformer under a Gaussian assumption achieved 55.2 % WER which was further reduced to 52.0 % with a K0 pdf, whereas the WER for data recorded with close-talking microphone was 21.6 %.
同时有源说话者的最小互信息波束形成
在这项工作中,我们解决了一个声学波束成形应用,其中两个扬声器同时活跃。我们为每个源构造了一个广义旁瓣对消(GSC)配置的子带域波束形成器。与通常做法相反,我们然后共同调整两个GSCs的主动权重向量,以获得具有最小互信息(MMI)的两个输出信号。为了计算复杂子带快照的互信息,我们考虑了四种概率密度函数(pdfs),即高斯、拉普拉斯、K0和lceil pdfs。后三个属于超高斯密度函数类,通常用于独立分量分析,而不是传统的波束形成。我们通过对PASCAL语音分离挑战赛的数据进行一系列远场自动语音识别实验,证明了我们提出的技术的有效性。在实验中,延迟和波束形成器的字错误率(WER)达到70.4%。在高斯假设下,MMI波束形成器的噪声比达到55.2%,在K0 pdf下进一步降低到52.0%,而在近距离传声器记录数据时,噪声比为21.6%。
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