标题: | 使用卡曼滤波器追踪参考讯号之适应性语音纯化波束形成器 Adaptive Beamformer for Speech Enhancement Using Kalman Filter with Reference Signal Tracking |
作者: | 朱育成 Chu, Yu-Cheng 胡竹生 Hu, Jwu-Sheng 电控工程研究所 |
关键字: | 空间滤波器;语音纯化;卡曼滤波器;麦克风阵列;beamformer;speech enhancement;Kalman filter;microphone array |
公开日期: | 2011 |
摘要: | 本论文提出一套利用麦克风阵列来降低噪音及回响效应的演算法。在实际环境中,目标音讯不只常受到稳态杂讯及非稳态杂讯的干扰,更常因为回响效应而使语音品质遭到破坏。因此,本论文期望设计一个能滤除杂讯并减少回响影响的适应性波束形成器。此演算法在波束形成器演算法中,引入参考讯号的观念并辅以Kalman滤波器来进行演算。此外,经过些微的修改,本演算法也可以利用于侦测语音活动。藉由适当的语音活动侦测,可以帮助分辨目标与噪音在本质上的不同,并且加速Kalman滤波器的收敛。利用实际在车上录得的音档进行的实验结果也在此篇论文中呈现。本论文并利用客观的参数评估所提出的波束形成器与语音活动侦测的效能,并与其他已知的方法进行比较分析。 In this thesis, an algorithm that considers noise reduction and de-reverberation simultaneously using microphone array is proposed. In many practical environments, the desired speech signal is usually contaminated by stationary or non-stationary noises and distorted by reverberation. When considering noise reduction only, the desired speech signal could be distorted further due to the effect of desire signal cancellation etc. The objective of this thesis is to design an adaptive beamformer to incorporate de-reverberation into the noise reduction framework. The proposed method tracks a pre-recorded reference signal to compensate the reverberation effect. Consequently, the algorithm results in a trade-off between the two objectives. Further, a voice activity detection (VAD) algorithm is proposed by slightly modifying the proposed algorithm. An adequate VAD can help to identify the nature of signal and noise and accelerate the convergence rate of Kalman filter. The experiments on real car sound samples are processed. The performance of beamformer and voice activity detection are both evaluated and compared with existing algorithms. |
URI: | http://140.113.39.130/cdrfb3/record/nctu/#GT079812549 http://hdl.handle.net/11536/46906 |
显示于类别: | Thesis |
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