首页> 外文会议>Conference on Advanced Signal Processing Algorithms, Architectures, and Implementations Ⅺ Aug 1-3, 2001, San Diego, USA >Estimation of fundamental frequencies in polyphonic music sound using subspace-based approach
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Estimation of fundamental frequencies in polyphonic music sound using subspace-based approach

机译:使用基于子空间的方法估计和弦音乐声音中的基频

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Music is a sum of several instrumental sounds whose individual fundamental frequencies are based on the musical score. Reversely musical sound contains information about the score, such as the instruments played and their fundamental frequencies. Automatic identification of scores from the musical sound is called the automatic transcription. There are many items to be estimated; the type of instruments, fundamental frequency, and note. Among these, the fundamental frequency estimation problem (FFE) has been widely studied. It is extensively studied for more than thirty years and there are many algorithms for the estimation of mono-phonic sound and poly-phonic sound. In this paper we propose a new estimation method of musical sound using the subspace approach. Our algorithm can be used to estimate poly-phonic and poly-instrumental sounds. This subspace approach is based on the autocorrelation of sounds and the orthogonality property. First, we gather subspaces of various instruments with different fundamental frequency. We define the subspaces as sound manifold. Next, we compare sound manifold and the subspace of measurement musical sound. We use the noise subspace of measurement sound and apply a MUSIC-like algorithm which use the orthogonality property of the signal subspace and the noise subspace. We test our algorithm with MIDI signals and show good identification capability.
机译:音乐是几种乐器声音的总和,其个别基本频率基于乐谱。相反,音乐声音包含有关乐谱的信息,例如演奏的乐器及其基本频率。从音乐声中自动识别乐谱称为自动转录。有许多项目需要估算;乐器的类型,基本频率和音符。其中,基本频率估计问题(FFE)已被广泛研究。它已经进行了三十多年的广泛研究,并且有许多用于估计单声道声音和多声道声音的算法。在本文中,我们提出了一种使用子空间方法的音乐声音估计新方法。我们的算法可用于估计多和弦和多乐器的声音。这种子空间方法基于声音的自相关和正交性。首先,我们收集具有不同基本频率的各种乐器的子空间。我们将子空间定义为声音流形。接下来,我们比较声音流形和测量音乐声音的子空间。我们使用测量声音的噪声子空间,并应用类似于MUSIC的算法,该算法利用信号子空间和噪声子空间的正交性。我们用MIDI信号测试了算法,并显示出良好的识别能力。

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