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Combining DCT and Adaptive KLT for Noisy Speech Enhancement

机译:结合DCT和自适应KLT进行噪声语音增强

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This paper investigates the correlation between successive speech components across time as well as frequency in DCT domain, and proposes a novel speech model for enhancing noisy speech, which assumes the sequence of speech components among successive frames to be a highly correlated and non- stationary process. Based on this model, a linear estimator of clean speech components is obtained from the noisy speech components of successive frames using MMSE estimation. This estimator is implemented by applying the KLT to the noisy components vector. And to reduce the computation demand, an adaptive KLT technique is used for performing eigenvalue decomposition in agreement with the speech model. In simulations with speech signals degraded by noises, the proposed method shows improved performance over the traditional DCT method for a number of objective and subjective measures.
机译:本文研究了DCT域中跨时间和频率的连续语音成分之间的相关性,并提出了一种用于增强嘈杂语音的新颖语音模型,该模型假定连续帧之间的语音成分顺序是高度相关且非平稳的过程。基于该模型,使用MMSE估计从连续帧的嘈杂语音分量中获得干净语音分量的线性估计器。该估计器是通过将KLT应用于噪声分量矢量来实现的。并且为了减少计算需求,使用自适应KLT技术来执行与语音模型一致的特征值分解。在语音信号由于噪声而退化的仿真中,该方法在许多客观和主观指标上均显示出优于传统DCT方法的性能。

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