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An approximate Bayesian fundamental frequency estimator

机译:近似贝叶斯基本频率估计器

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摘要

Joint fundamental frequency and model order estimation is an important problem in several applications such as speech and music processing. In this paper, we develop an approximate estimation algorithm of these quantities using Bayesian inference. The inference about the fundamental frequency and the model order is based on a probability model which corresponds to a minimum of prior information. From this probability model, we give the exact posterior distributions on the fundamental frequency and the model order, and we also present analytical approximations of these distributions which lower the computational load of the algorithm. By use of simulations on both a synthetic signal and a speech signal, the algorithm is demonstrated to be more accurate than a state-of-the-art maximum likelihood-based method.
机译:联合基本频率和模型阶数估计是诸如语音和音乐处理之类的几种应用中的重要问题。在本文中,我们使用贝叶斯推断开发了这些数量的近似估计算法。关于基本频率和模型阶数的推论基于与最小先验信息相对应的概率模型。从该概率模型中,我们给出了基本频率和模型阶数的精确后验分布,并且还给出了这些分布的解析近似值,从而降低了算法的计算量。通过对合成信号和语音信号进行仿真,证明该算法比最新的基于最大似然法的方法更为准确。

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