Online blind speech extraction based on a locally quadratic kurtosis criteria and a preprocessing Automatic Gain Controller

B. Sallberg, N. Grbic, I. Claesson
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引用次数: 7

Abstract

This paper focuses on realtime speech extraction using blind adaptive beamforming. The speech extraction is carried out using an approximation of the kurtosis measure in a subband domain. The introduced kurtosis approximation is an improvement of a recently proposed approximation technique where a locally quadratic criterion was solved at each iteration. The improvement introduced in this paper regards an approach to normalize this same criterion using a pre-processing automatic gain control unit, and thereby making the algorithm invariant to input signal scales. The proposed method outperforms the recent technique in terms of signal to interference ratio improvement. In addition, the increased memory consumption and processing load due to the proposed improvement is comparably low and this is often desirable in a realtime digital signal processor (DSP) implementation. Further, a real-time implementation of the method is conducted and results with real data is presented.
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基于局部二次峰度准则和预处理自动增益控制器的在线盲语音提取
研究了基于盲自适应波束形成的实时语音提取方法。语音提取是使用子带域的峰度测量的近似值进行的。引入的峰度近似是对最近提出的每次迭代求解局部二次准则的近似技术的改进。本文介绍的改进方法是使用预处理自动增益控制单元对同一准则进行归一化,从而使算法对输入信号尺度保持不变。该方法在提高信噪比方面优于现有技术。此外,由于所提出的改进而增加的内存消耗和处理负载相对较低,这在实时数字信号处理器(DSP)实现中通常是理想的。在此基础上,对该方法进行了实时实现,并给出了实际数据的结果。
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