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首页> 外文期刊>Audio, Speech, and Language Processing, IEEE Transactions on >A Robust and Computationally Efficient Subspace-Based Fundamental Frequency Estimator
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A Robust and Computationally Efficient Subspace-Based Fundamental Frequency Estimator

机译:基于子空间的鲁棒且计算效率高的基本频率估计器

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This paper presents a method for high-resolution fundamental frequency (F 0) estimation based on subspaces decomposed from a frequency-selective data model, by effectively splitting the signal into a number of subbands. The resulting estimator is termed frequency-selective harmonic MUSIC (F-HMUSIC). The subband-based approach is expected to ensure computational savings and robustness. Additionally, a method for automatic subband signal activity detection is proposed, which is based on information-theoretic criterion where no subjective judgment is needed. The F-HMUSIC algorithm exhibits good statistical performance when evaluated with synthetic signals for both white and colored noises, while its evaluation on real-life audio signal shows the algorithm to be competitive with other estimators. Finally, F-HMUSIC is found to be computationally more efficient and robust than other subspace-based F 0 estimators, besides being robust against recorded data with inharmonicities.
机译:通过有效地将信号分成多个子带,本文提出了一种基于从频率选择数据模型分解的子空间的高分辨率基频(F 0)估计方法。所得的估算器称为频率选择谐波MUSIC(F-HMUSIC)。基于子带的方法有望确保节省计算量和鲁棒性。另外,提出了一种基于信息理论的自动子带信号活动检测方法,该方法不需要主观判断。当用合成信号对白噪声和彩色噪声进行评估时,F-HMUSIC算法表现出良好的统计性能,而对真实音频信号的评估表明,该算法与其他估计器相比具有竞争优势。最后,发现F-HMUSIC在计算上比其他基于子空间的F 0估计器更有效,更健壮,而且对不和谐的记录数据也很健壮。

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