首页> 外文会议>European Signal Processing Conference(EUSIPCO 2005); 20050904-08; Antalya(TK) >ADAPTIVE MICROPHONE ARRAY BASED ON MAXIMUM LIKELIHOOD CRITERION
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ADAPTIVE MICROPHONE ARRAY BASED ON MAXIMUM LIKELIHOOD CRITERION

机译:基于最大似然准则的自适应麦克风阵列

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The Minimum Variance (MV) criterion is widely used for weight vector estimation of the adaptive microphone array (AMA). The drawback of this criterion is the cancellation of the desired speech signal and its degradation when the microphone array is in a room with reverberation. Applying the Maximum Likelihood (ML) instead of MV criterion has two benefits. The first is the cancellation of interference and the second is the desired speech enhancement. Applying the ML criterion calls for the estimation of the signal and the interference covariance matrices. Both matrices can be estimated from the available microphone signals using the pause detection algorithm based on signal to noise ratio. The proposed speech enhancement algorithm was evaluated by simulating a room with reverberation. Experiments showed the superiority of this algorithm compared to MV based algorithms.
机译:最小方差(MV)准则广泛用于自适应麦克风阵列(AMA)的权重矢量估计。该标准的缺点是当麦克风阵列在具有混响的房间中时,期望的语音信号被抵消并且其劣化。应用最大似然(ML)代替MV准则有两个好处。第一个是消除干扰,第二个是所需的语音增强。应用ML准则要求估计信号和干扰协方差矩阵。可以使用暂停检测算法根据信噪比从可用的麦克风信号中估计这两个矩阵。拟议的语音增强算法是通过模拟带有混响的房间进行评估的。实验表明,与基于MV的算法相比,该算法具有优越性。

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