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Robust two dimensional source localization using the MUSIC-Group delay spectrum

机译:使用MUSIC-Group延迟谱进行稳健的二维源定位

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Subspace-based methods require a large number of sensors for localization of closely spaced sources since the spectral magnitude of Multiple Signal Classification (MUSIC) is used. However, the MUSIC-Group delay (MUSIC-GD) method has been used earlier to resolve closely spaced sources with a limited number of sensors. In this work, the MUSIC-GD method is used in high resolution azimuth and elevation estimation of spatially close sources under reverberant environments over a planar array. The efficiency of the MUSIC-GD method in effectively resolving closely spaced sources, even when the noise eigenvalues change considerably under reverberation, is described and illustrated. Localization error analysis is performed on the proposed method and its performance is illustrated using two dimensional scatter plots. Cramer-Rao lower bound (CRB) analysis is also performed and the CRB is compared with the Root Mean Square Error (RMSE) of the proposed method. Large vocabulary speaker dependent speech recognition experiments are conducted on sentences from the TIMIT database acquired over a planar microphone array. The proposed MUSIC-GD method indicates reasonable improvements in terms of localization and the Cramer-Rao lower bound error analysis. A reasonable reduction is also observed in terms of word error rate (WER) from the experiments conducted on distant speech recognition.
机译:由于使用了多信号分类(MUSIC)的频谱幅度,因此基于子空间的方法需要大量传感器来对空间紧密的源进行定位。但是,MUSIC组延迟(MUSIC-GD)方法已在较早时用于解决传感器数量有限的近距离信号源。在这项工作中,MUSIC-GD方法用于在混响环境下在平面阵列上的空间近距离源的高分辨率方位角和仰角估计。描述并说明了MUSIC-GD方法在有效解决近距离信号源方面的效率,即使在混响中噪声特征值发生很大变化时也是如此。对提出的方法进行了定位误差分析,并使用二维散点图说明了其性能。还进行了Cramer-Rao下界(CRB)分析,并将CRB与所提出方法的均方根误差(RMSE)进行了比较。依赖于大词汇量的说话者的语音识别实验是对TIMIT数据库中通过平面麦克风阵列获取的句子进行的。所提出的MUSIC-GD方法在定位和Cramer-Rao下界误差分析方面表明了合理的改进。从远距离语音识别进行的实验中,在单词错误率(WER)方面也观察到了合理的降低。

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