改进的平方差分函数使用傅里叶级数近似的基音估计

Balachandra Kumaraswamy, P. G. Poonacha
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引用次数: 3

摘要

近几十年来,研究人员提出了时域和频域的几种基音估计算法。其中,平方差分函数(SDF)是目前流行的时域基音检测算法之一。一种被称为YIN的改良的SDF被认为能提供更好的结果。每一种基音检测算法都有其局限性,并且在所有算法中都会观察到基音检测的误差。我们特别解决了一个突出的基音检测误差,即谐波误差,其中估计的基音是实际基音的倍数之一。本文提出了用傅立叶级数逼近对YIN函数进行修正以减小谐波误差。由于使用了傅立叶级数系数,该方法可以更好地捕获信号,因此可以更好地估计音乐等准周期信号的音高。我们对各种谐波信号进行了研究和分析,找出谐波误差产生的原因。然后将该算法应用于真实音乐信号和合成信号。仿真研究表明,该算法改进了基音估计方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modified square difference function using fourier series approximation for pitch estimation
Several pitch estimation algorithms both in time domain as well as frequency domain have been proposed by researchers in last few decades. Among them, Square Difference Function (SDF) is one of the popular time-domain pitch detection algorithms. A modified SDF known as YIN is known to give better results. Each pitch detection algorithm has its limitations and error in pitch detection is observed across all algorithms. We specifically address one of the prominent pitch detection errors, known as harmonic errors where the estimated pitch is one of the multiples of the actual pitch. In this paper, we propose a modification to YIN function using Fourier series approximation to reduce harmonic errors. This method gives better estimate of pitch in case of quasi-periodic signals like music due to use of Fourier series coefficients which captures the signal in a better way. We have studied various harmonic signals and analyzed them to find out the cause for such harmonic errors. Then we apply the algorithm on real music signals as well as synthetic signals. Our simulation study shows that the new algorithm leads to an improved pitch estimation method.
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