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Maximum a-posteriori probability pitch tracking in noisy environments using harmonic model

机译:使用谐波模型在嘈杂环境中的最大后验概率音调跟踪

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摘要

Modern speech processing applications require operation on signal of interest that is contaminated by high level of noise. This situation calls for a greater robustness in estimation of the speech parameters, a task which is hard to achieve using standard speech models. In this paper, we present an optimal estimation procedure for sound signals (such as speech) that are modeled by harmonic sources. The harmonic model achieves more robust and accurate estimation of voiced speech parameters. Using maximum a posteriori probability framework, successful tracking of pitch parameters is possible in ultra low signal to noise conditions (as low as -15 dB). The performance of the method is evaluated using the Keele pitch detection database with realistic background noise. The results show best performance in comparison to other state-of-the-art pitch detectors. Application of the proposed algorithm in a simple speaker identification system shows significant improvement in the performance.
机译:现代语音处理应用程序要求对受高噪声污染的目标信号进行操作。这种情况要求语音参数的估计具有更大的鲁棒性,这是使用标准语音模型很难实现的任务。在本文中,我们提出了一种针对由谐波源建模的声音信号(例如语音)的最佳估计程序。谐波模型实现了浊音参数的更鲁棒和准确的估计。使用最大后验概率框架,可以在超低信噪条件(低至-15 dB)下成功跟踪音高参数。使用基尔音高检测数据库和真实的背景噪声评估该方法的性能。与其他最新的音高检测器相比,结果显示出最佳性能。所提出的算法在简单的说话人识别系统中的应用显示了性能上的显着提高。

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