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Canonical Correlation Analysis Using for DOA Estimation of Multiple Audio Sources

机译:用于多个音频源的DOA估计的规范相关性分析

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In this paper we study direction of arrival (DOA) estimation of multiple audio sources by canonical correlation analysis (CCA), which is based on a sparse linear arrays. This array is composed of two separated subarrays. From the receiving data set, we can obtain the separate components by CCA. After a simple correlation, time difference can be obtained, and then we can compute the azimuth of different audio sources. The important contribution of this new estimation method is that it can reduce the effect of inter-sensor spacing to DOA estimation and the computation burden is light. Simulation result confirms the validity and practicality of the proposed approach. Results of DOA estimation are more accurate and stable based on this new method.
机译:在本文中,我们通过规范相关分析(CCA)来研究多个音频源的到达方向(CCA),其基于稀疏的线性阵列。该阵列由两个分隔的子阵列组成。从接收数据集中,我们可以通过CCA获取单独的组件。在简单相关之后,可以获得时间差,然后我们可以计算不同音频源的方位角。这种新估计方法的重要贡献是它可以降低传感器间距对DOA估计的影响,并且计算负担是光线。仿真结果证实了所提出的方法的有效性和实用性。基于这种新方法,DOA估计的结果更准确且稳定。

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