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首页> 外文期刊>Audio, Speech, and Language Processing, IEEE/ACM Transactions on >Window-Dominant Signal Subspace Methods for Multiple Short-Term Speech Source Localization
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Window-Dominant Signal Subspace Methods for Multiple Short-Term Speech Source Localization

机译:多个短期语音源定位的窗口主导信号子空间方法

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摘要

Signal subspace has been widely exploited to localize multiple speech sources. However, most signal subspace methods cannot count the number of sources, and do not make use of speech sparsity in the frequency domain. This paper presents a grid search window-dominant signal subspace (GS-WDSS) method and a closed-form WDSS (CF-WDSS) method to localize short-term speech sources. Such methods are based upon the generalized sparsity assumption that each window containing some time-adjacent bins is dominated by one source, as opposed to the conventional assumption that each individual bin is dominated by one source. The generalized assumption enables the principal eigenvector of the spatial correlation matrix on each window to span the signal subspace of the window-dominant source. The direction-of-arrival (DOA) of the dominant source is estimated from the principal eigenvector. The DOAs and the number of sources are eventually summarized from the DOA histogram of all dominant sources. The conventional assumption is a special case of the generalized assumption. By using the generalized assumption, the performance in estimating DOAs of the window-dominant sources is significantly improved at the cost of acceptable masking effect. The superiority of the proposed methods is verified by simulated and real experiments.
机译:信号子空间已被广泛利用以定位多个语音源。但是,大多数信号子空间方法无法计算信号源的数量,并且无法在频域中利用语音稀疏性。本文提出了一种网格搜索窗口主导信号子空间(GS-WDSS)方法和一种封闭形式WDSS(CF-WDSS)方法来定位短期语音源。此类方法基于广义稀疏性假设,即每个包含某些时间相邻仓位的窗口均由一个来源控制,这与常规假设中每个单独仓位均由一个来源控制的常规假设相反。广义假设使每个窗口上的空间相关矩阵的主特征向量能够跨越窗口主导源的信号子空间。主导源的到达方向(DOA)是根据主特征向量估算的。最终从所有主要来源的DOA直方图中总结了DOA和来源数量。常规假设是广义假设的特例。通过使用广义假设,以可接受的掩蔽效果为代价,显着提高了估计窗口主导源的DOA的性能。通过仿真和真实实验验证了所提方法的优越性。

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