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Causal Convolutional Encoder Decoder-Based Augmented Kalman Filter for Speech Enhancement

机译:因果卷积编码器解码器的语音增强基于解码器的增强卡尔曼滤波器

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Speech enhancement using augmented Kalman filter (AKF) suffers from the biased estimates of the linear prediction coefficients (LPCs) of speech and noise signal in noisy conditions. The existing AKF was particularly designed to enhance the colored noise corrupted speech. In this paper, a causal convolutional encoder decoder (CCED)-based method utilizes the LPC estimates of the AKF for speech enhancement. Specifically, a CCED network is used to estimate the instantaneous noise spectrum for computing the LPCs of noise on a framewise basis. Each noise corrupted speech frame is pre-whitened by a whitening filter, which is constructed with the noise LPCs. The speech LPCs are computed from the pre-whitened speech. The improved speech and noise LPCs enables the AKF to minimize residual noise as well as distortion in the enhanced speech. Objective and subjective testing on NOIZEUS corpus reveal that the enhanced speech produced by the proposed method exhibits higher quality and intelligibility than the benchmark methods in various noise conditions for a wide range of SNR levels.
机译:使用增强的卡尔曼滤波器(AKF)的语音增强来自嘈杂的条件中语音和噪声信号的线性预测系数(LPC)的偏置估计。现有的AKF特别旨在增强彩色噪声损坏的语音。在本文中,基于因果卷积编码器解码器(CCED)的方法利用AKF的LPC估计进行语音增强。具体地,CCED网络用于估计帧动基础上用于计算噪声LPC的瞬时噪声频谱。每个噪声损坏的语音框架由美白滤波器预制,其由噪声LPC构造。语音LPC是从预美的语音计算的。改进的语音和噪声LPC使AKF能够最大限度地减少剩余噪声以及增强语音中的失真。目的和主导语料库的主观测试表明,所提出的方法产生的增​​强语音比各种噪声条件中的基准方法具有更高的质量和可理解性,用于各种SNR水平。

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