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A Dynamical Model of Pitch Memory Provides an Improved Basis for Implied Harmony Estimation

机译:音调记忆的动力学模型为隐含和声估计提供了改进的基础

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Tonal melody can imply vertical harmony through a sequence of tones. Current methods for automatic chord estimation commonly use chroma-based features extracted from audio signals. However, the implied harmony of unaccompanied melodies can be difficult to estimate on the basis of chroma content in the presence of frequent nonchord tones. Here we present a novel approach to automatic chord estimation based on the human perception of pitch sequences. We use cohesion and inhibition between pitches in auditory short-term memory to differentiate chord tones and nonchord tones in tonal melodies. We model short-term pitch memory as a gradient frequency neural network, which is a biologically realistic model of auditory neural processing. The model is a dynamical system consisting of a network of tonotopically tuned nonlinear oscillators driven by audio signals. The oscillators interact with each other through nonlinear resonance and lateral inhibition, and the pattern of oscillatory traces emerging from the interactions is taken as a measure of pitch salience. We test the model with a collection of unaccompanied tonal melodies to evaluate it as a feature extractor for chord estimation. We show that chord tones are selectively enhanced in the response of the model, thereby increasing the accuracy of implied harmony estimation. We also find that, like other existing features for chord estimation, the performance of the model can be improved by using segmented input signals. We discuss possible ways to expand the present model into a full chord estimation system within the dynamical systems framework.
机译:音调旋律可以通过一系列音调暗示垂直和声。当前用于自动和弦估计的方法通常使用从音频信号中提取的基于色度的特征。但是,在频繁出现非和弦音调的情况下,很难根据色度含量来估计无伴奏旋律的暗含和声。在这里,我们提出一种基于人类对音高序列的感知的自动和弦估计的新颖方法。我们在听觉短期记忆的音调之间使用凝聚力和抑制力来区分音调旋律中的和弦音调和非和弦音调。我们将短期音调记忆建模为梯度频率神经网络,这是听觉神经处理的生物学现实模型。该模型是一个动态系统,由由音频信号驱动的局部调整非线性振荡器网络组成。振荡器通过非线性共振和横向抑制相互影响,并且从这些相互作用中出现的振荡轨迹的图案被用作音调凸度的量度。我们使用无伴奏音调的集合测试该模型,以将其评估为和弦估计的特征提取器。我们表明,在模型的响应中有选择地增强了和弦音,从而提高了隐含和声估计的准确性。我们还发现,和其他现有的和弦估计功能一样,可以通过使用分段输入信号来改善模型的性能。我们讨论了将现有模型扩展到动态系统框架内的完整和弦估计系统的可能方法。

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