On the use of autoregressive modeling for localization of speech

J. Dmochowski, J. Benesty, S. Affes
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Abstract

The localization of speech is essential for improving the quality of hands-free pick-up as well as for applications such as automatic camera steering. This paper proposes a source localization method tailored to the distinct nature of speech that is based on the linearly constrained minimum variance (LCMV) beamforming method. The LCMV steered beam temporally focuses the array onto the desired signal. By modeling the desired signal as an autoregressive (AR) process and embedding the AR coefficients in the linear constraints, the localization accuracy is significantly improved as compared to existing techniques.
自回归建模在语音定位中的应用
语音定位对于提高免提拾取的质量以及自动相机转向等应用至关重要。本文提出了一种基于线性约束最小方差(LCMV)波束形成方法的针对语音特性的源定位方法。LCMV操纵波束将阵列暂时聚焦到期望的信号上。通过将期望信号建模为自回归(AR)过程并将AR系数嵌入到线性约束中,与现有技术相比,定位精度得到了显著提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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