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Voice Activity Detection in Presence of Transient Noise Using Spectral Clustering

机译:频谱聚类在瞬态噪声存在下的语音活动检测

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摘要

Voice activity detection has attracted significant research efforts in the last two decades. Despite much progress in designing voice activity detectors, voice activity detection (VAD) in presence of transient noise is a challenging problem. In this paper, we develop a novel VAD algorithm based on spectral clustering methods. We propose a VAD technique which is a supervised learning algorithm. This algorithm divides the input signal into two separate clusters (i.e., speech presence and speech absence frames). We use labeled data in order to adjust the parameters of the kernel used in spectral clustering methods for computing the similarity matrix. The parameters obtained in the training stage together with the eigenvectors of the normalized Laplacian of the similarity matrix and Gaussian mixture model (GMM) are utilized to compute the likelihood ratio needed for voice activity detection. Simulation results demonstrate the advantage of the proposed method compared to conventional statistical model-based VAD algorithms in presence of transient noise.
机译:在过去的二十年中,语音活动检测已吸引了大量的研究工作。尽管在设计语音活动检测器方面取得了很大进展,但是在存在瞬态噪声的情况下进行语音活动检测(VAD)仍然是一个具有挑战性的问题。在本文中,我们基于谱聚类方法开发了一种新颖的VAD算法。我们提出了一种VAD技术,它是一种监督学习算法。该算法将输入信号分为两个单独的簇(即,语音存在和语音缺失帧)。我们使用标记数据来调整光谱聚类方法中用于计算相似性矩阵的内核参数。在训练阶段获得的参数与相似矩阵的归一化拉普拉斯特征向量和高斯混合模型(GMM)一起用于计算语音活动检测所需的似然比。仿真结果证明了与存在瞬态噪声的传统基于统计模型的VAD算法相比,该方法的优势。

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