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平原斑马的鸣声 repertoire 与个体特征()。 需注意,这里“Vocal repertoire”准确意思不太明确,可结合具体语境进一步优化,括号内容原文缺失完整信息无法准确翻译。

Vocal repertoire and individuality in the plains zebra ().

作者信息

Xie Bing, Daunay Virgile, Petersen Troels C, Briefer Elodie F

机构信息

Behavioural Ecology Group, Section for Ecology and Evolution, University of Copenhagen, Copenhagen, Denmark.

Research and Conservation, Copenhagen Zoo, Roskildevej 38, 2000 Frederiksberg, Denmark.

出版信息

R Soc Open Sci. 2024 Jul 10;11(7):240477. doi: 10.1098/rsos.240477. eCollection 2024 Jul.

Abstract

Acoustic signals are vital in animal communication, and quantifying them is fundamental for understanding animal behaviour and ecology. Vocalizations can be classified into acoustically and functionally or contextually distinct categories, but establishing these categories can be challenging. Newly developed methods, such as machine learning, can provide solutions for classification tasks. The plains zebra is known for its loud and specific vocalizations, yet limited knowledge exists on the structure and information content of its vocalzations. In this study, we employed both feature-based and spectrogram-based algorithms, incorporating supervised and unsupervised machine learning methods to enhance robustness in categorizing zebra vocalization types. Additionally, we implemented a permuted discriminant function analysis to examine the individual identity information contained in the identified vocalization types. The findings revealed at least four distinct vocalization types-the 'snort', the 'soft snort', the 'squeal' and the 'quagga quagga'-with individual differences observed mostly in snorts, and to a lesser extent in squeals. Analyses based on acoustic features outperformed those based on spectrograms, but each excelled in characterizing different vocalization types. We thus recommend the combined use of these two approaches. This study offers valuable insights into plains zebra vocalization, with implications for future comprehensive explorations in animal communication.

摘要

声学信号在动物交流中至关重要,对其进行量化是理解动物行为和生态学的基础。发声可根据声学、功能或情境分为不同类别,但确定这些类别可能具有挑战性。新开发的方法,如机器学习,可为分类任务提供解决方案。平原斑马以其响亮且独特的发声而闻名,但对其发声的结构和信息内容了解有限。在本研究中,我们采用了基于特征和基于频谱图的算法,结合了有监督和无监督的机器学习方法,以增强对斑马发声类型分类的稳健性。此外,我们实施了置换判别函数分析,以检查已识别发声类型中包含的个体身份信息。研究结果揭示了至少四种不同的发声类型——“喷鼻声”、“轻柔喷鼻声”、“尖叫”和“斑驴叫声”,个体差异主要体现在喷鼻声中,在尖叫中程度较轻。基于声学特征的分析优于基于频谱图的分析,但每种方法在表征不同发声类型方面都各有所长。因此,我们建议联合使用这两种方法。本研究为平原斑马的发声提供了有价值的见解,对未来动物交流的全面探索具有启示意义。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4580/11286140/f513e3e96f0c/rsos.240477.f001.jpg

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