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Robust block-based clustering and identification of autoregressive speech parameters based on dynamic state tracking

机译:基于动态状态跟踪的基于块的鲁棒聚类和自回归语音参数识别

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In this paper, we propose two block-based clustering and identification algorithms that contribute to robust estimation of autoregressive (AR) speech parameters in noisy environments. Motivated by the fact that the evolution pattern of speech dynamics could be an observable feature that are retained in a series of noisy observations, a dynamic state tracking scheme based on Kalman filter is incorporated to utilize this additional trajectory information in block-based AR codebook design. The proposed algorithm is devised in a sense that AR blocks with similar clean line spectrum frequency trajectories as well as noisy-to-clean mappings are clustered offline and identified online. It is compared with conventional vector quantization based approaches that directly minimize a distortion between AR parameters. Through objective assessments based on mean square error and log-spectral distance, it is demonstrated that the proposed algorithm achieves significant improvement over conventional methods in various conditions.
机译:在本文中,我们提出了两种基于块的聚类和识别算法,它们有助于在嘈杂的环境中对自回归(AR)语音参数进行可靠的估计。由于语音动力学的演化模式可能是可观察到的特征而保留在一系列嘈杂的观察结果中,因此,基于卡尔曼滤波器的动态状态跟踪方案被纳入到基于块的AR码本设计中以利用这一额外的轨迹信息。 。在某种意义上设计提出的算法,是将具有相似的干净线频谱频率轨迹的AR块以及从噪声到干净的映射离线聚类并在线识别。将其与直接将AR参数之间的失真最小化的基于传统矢量量化的方法进行了比较。通过基于均方差和对数光谱距离的客观评估,证明了该算法在各种条件下均比常规方法有了明显的改进。

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