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A DUAL KALMAN FILTER-BASED SMOOTHER FOR SPEECH ENHANCEMENT

机译:一种基于双卡尔曼滤波器的语音增强筛选

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Kalman algorithms have been widely applied, for instance in single-channel speech enhancement. However, when carrying out Kalman smoothing, the computational cost and the data storage requirements are two specific problems. In this paper, a dual-filter-based smoother is proposed and used in the framework of speech enhancement. Our approach comprises a forward-in-time Kalman filter and a backward-in-time Kalman filter. Both filters are based on their respective forward-in-time linear prediction (LP) model and backward-in-time LP model. This method does not require a large storage space as a standard Kalman smoother does. The algorithm is evaluated by considering a speech signal embedded in a white Gaussian noise. Simulation Results show that the proposed algorithm provides a higher improvement of signal to noise ratio (SNR) than the Kalman filtering.
机译:卡尔曼算法已被广泛应用,例如单通道语音增强。但是,在进行卡尔曼平滑时,计算成本和数据存储要求是两个特定问题。在本文中,提出了一种基于双滤波器的光滑,并用于语音增强框架中。我们的方法包括前进时间的卡尔曼滤波器和后退时间内卡尔曼滤波器。两个过滤器都基于它们各自的前进时间线性预测(LP)模型和后续时间LP模型。此方法不需要大量存储空间作为标准的卡尔曼更顺畅。通过考虑嵌入在白色高斯噪声中的语音信号来评估算法。仿真结果表明,该算法提供了比Kalman滤波的信噪比(SNR)更高提高。

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