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不规则动物发声的非线性分析。

Nonlinear analysis of irregular animal vocalizations.

作者信息

Tokuda Isao, Riede Tobias, Neubauer Jürgen, Owren Michael J, Herzel Hanspeter

机构信息

Department of Computer Science and Systems Engineering, Muroran Institute of Technology, Hokkaido, Japan.

出版信息

J Acoust Soc Am. 2002 Jun;111(6):2908-19. doi: 10.1121/1.1474440.

Abstract

Animal vocalizations range from almost periodic vocal-fold vibration to completely atonal turbulent noise. Between these two extremes, a variety of nonlinear dynamics such as limit cycles, subharmonics, biphonation, and chaotic episodes have been recently observed. These observations imply possible functional roles of nonlinear dynamics in animal acoustic communication. Nonlinear dynamics may also provide insight into the degree to which detailed features of vocalizations are under close neural control, as opposed to more directly reflecting biomechanical properties of the vibrating vocal folds themselves. So far, nonlinear dynamical structures of animal voices have been mainly studied with spectrograms. In this study, the deterministic versus stochastic (DVS) prediction technique was used to quantify the amount of nonlinearity in three animal vocalizations: macaque screams, piglet screams, and dog barks. Results showed that in vocalizations with pronounced harmonic components (adult macaque screams, certain piglet screams, and dog barks), deterministic nonlinear prediction was clearly more powerful than stochastic linear prediction. The difference, termed low-dimensional nonlinearity measure (LNM), indicates the presence of a low-dimensional attractor. In highly irregular signals such as juvenile macaque screams, piglet screams, and some dog barks, the detectable amount of nonlinearity was comparatively small. Analyzing 120 samples of dog barks, it was further shown that the harmonic-to-noise ratio (HNR) was positively correlated with LNM. It is concluded that nonlinear analysis is primarily useful in animal vocalizations with strong harmonic components (including subharmonics and biphonation) or low-dimensional chaos.

摘要

动物发声范围从几乎周期性的声带振动到完全无调的湍流噪声。在这两个极端之间,最近观察到了各种非线性动力学现象,如极限环、次谐波、双声和混沌片段。这些观察结果暗示了非线性动力学在动物声学通信中可能具有的功能作用。非线性动力学还可以深入了解发声的详细特征在多大程度上受到紧密的神经控制,而不是更直接地反映振动声带本身的生物力学特性。到目前为止,动物声音的非线性动力学结构主要通过频谱图进行研究。在本研究中,使用确定性与随机性(DVS)预测技术来量化三种动物发声中的非线性程度:猕猴尖叫、仔猪尖叫和狗吠。结果表明,在具有明显谐波成分的发声中(成年猕猴尖叫、某些仔猪尖叫和狗吠),确定性非线性预测明显比随机性线性预测更有效。这种差异,称为低维非线性度量(LNM),表明存在低维吸引子。在高度不规则的信号中,如幼年猕猴尖叫、仔猪尖叫和一些狗吠,可检测到的非线性量相对较小。通过分析120个狗吠样本,进一步表明谐波与噪声比(HNR)与LNM呈正相关。得出的结论是,非线性分析主要对具有强谐波成分(包括次谐波和双声)或低维混沌的动物发声有用。

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