噪声语音的多音高跟踪算法

Mingyang Wu, Deliang Wang, Guy J. Brown
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引用次数: 304

摘要

一种有效的多音高跟踪算法是声信号处理的关键。然而,现有算法的性能并不令人满意。提出了一种鲁棒的多音高跟踪算法。我们的方法集成了一种改进的信道和峰值选择方法,一种跨不同信道提取周期性信息的新方法,以及一种用于形成连续音轨的隐马尔可夫模型(HMM)。所得到的算法可以在噪声环境下可靠地跟踪单双音轨。我们提出了一种多螺距情况下的螺距误差测量方法。在混合了各种干扰的语音数据库上对该算法进行了评估。定量比较表明,我们的算法明显优于现有算法。
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A multipitch tracking algorithm for noisy speech
An effective multipitch tracking algorithm for noisy speech is critical for acoustic signal processing. However, the performance of existing algorithms is not satisfactory. We present a robust algorithm for multipitch tracking of noisy speech. Our approach integrates an improved channel and peak selection method, a new method for extracting periodicity information across different channels, and a hidden Markov model (HMM) for forming continuous pitch tracks. The resulting algorithm can reliably track single and double pitch tracks in a noisy environment. We suggest a pitch error measure for the multipitch situation. The proposed algorithm is evaluated on a database of speech utterances mixed with various types of interference. Quantitative comparisons show that our algorithm significantly outperforms existing ones.
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Errata to "Using Steady-State Suppression to Improve Speech Intelligibility in Reverberant Environments for Elderly Listeners" Farewell Editorial Inaugural Editorial: Riding the Tidal Wave of Human-Centric Information Processing - Innovate, Outreach, Collaborate, Connect, Expand, and Win Three-Dimensional Sound Field Reproduction Using Multiple Circular Loudspeaker Arrays Introduction to the Special Issue on Processing Reverberant Speech: Methodologies and Applications
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