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Multi-shift principal component analysis based primary component extraction for spatial audio reproduction

机译:基于多移主成分分析的空间音频再现的主要组件提取

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In spatial audio analysis-synthesis, one of the key issues is to decompose a signal into primary and ambient components based on their spatial features. Principal component analysis (PCA) has been widely employed in primary component extraction, and shifted PCA (SPCA) is employed to enhance the primary extraction for input signals involving the inter-channel time difference. However, SPCA generally requires the primary components to come from one direction and cannot produce good results in the case of multiple directions. To solve this problem, we propose multi-shift PCA (MSPCA) by extending SPCA to multiple shifts. Two structures of MSPCA with different weighting methods are discussed. From the results of our simulations and listening tests, the proposed consecutive MSPCA with proper weighting is found to be superior to the conventional PCA and SPCA based primary extraction methods.
机译:在空间音频分析合成中,关键问题之一是基于其空间特征将信号分解为主和环境组件。主要成分分析(PCA)已广泛用于初级组分提取,并且使用偏移的PCA(SPCA)来增强涉及信道间时间差的输入信号的主要提取。然而,SPCA通常要求主要部件来自一个方向,并且在多个方向的情况下不能产生良好的结果。为了解决这个问题,我们通过将SPCA扩展到多个班次来提出多移式PCA(MSPCA)。讨论了具有不同加权方法的MSPCA的两个结构。从我们的模拟结果和听力测试,发现具有适当加权的提议的连续MSPCA优于传统的PCA和基于SPCA的主要提取方法。

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