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首页> 外文期刊>IEICE Transactions on Fundamentals of Electronics, Communications and Computer Sciences >Noise Spectrum Estimation with Entropy-Based VAD in Non-stationary Environments
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Noise Spectrum Estimation with Entropy-Based VAD in Non-stationary Environments

机译:非平稳环境中基于熵的VAD的噪声谱估计

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摘要

This study presents a fast adaptive algorithm for noise estimation in non-stationary environments. To make noise estimation adapt quickly to non-stationary noise environments, a robust entropy-based voice activity detection (VAD) is thus required. It is well-known that the entropy-based measure defined in spectral domain is very insensitive to the changing level of nose. To exploit the specific nature of straight lines existing on speech-only spectrogram, the proposed spectrum entropy measurement improved from spectrum entropy proposed by Shen et al. is further presented and is named band-splitting spectrum entropy (BSE). Consequently, the proposed recursive noise estimator including BSE-based VAD can update noise power spectrum accurately even if the noise-level quickly changes.
机译:这项研究提出了一种用于非平稳环境中噪声估计的快速自适应算法。为了使噪声估计快速适应非平稳噪声环境,因此需要鲁棒的基于熵的语音活动检测(VAD)。众所周知,在光谱域中定义的基于熵的度量对鼻子变化的水平非常不敏感。为了利用仅语音频谱图上存在的直线的特殊性质,所提出的频谱熵测量方法是从Shen等人提出的频谱熵的基础上改进的。进一步提出并称为带分裂谱熵(BSE)。因此,即使噪声水平快速变化,所提出的包括基于BSE的VAD的递归噪声估计器也可以准确地更新噪声功率谱。

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