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Segmentation and Analysis of Bird Trill Vocalizations

机译:鸟纹发声的分割与分析

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Animal communication and specifically acoustic communication is in the focus of ecological and biological research. With the advancement of monitoring technology, a vast amount of acoustic recordings of birds is continuously accumulated. As manual segmentation and annotation of this data is impractical, development of efficient algorithms for accurate detection, classification and segmentation of birdsong is therefore a prerequisite for further analysis. In this study we present an algorithm for automatic segmentation and parameters estimation of one type of bird vocalization, namely, the trill song. The algorithm is based on computing the short-time variance of the fundamental frequency derivative of bird acoustic signal for initial detection of syllables. The boundaries of each syllable are consequently obtained using a Gaussian smoothed short-time energy function and an adaptive threshold based on the energy envelope. The performance of the algorithm was evaluated using a comparison to human expert segmentation, as well as to ground-truth values of synthetic trills produced by the Harmonic + Noise model. A correct detection rate of more than 95% was yielded for SNR levels of -5 dB or higher for signals with additive colored noise, and for signals with additive white Gaussian noise more than 92% was obtained for SNR>-5dB. In addition, a high correlation between the automatic segmentation and that of a human expert was exemplified.
机译:动物交流,特别是声音交流,是生态和生物学研究的重点。随着监视技术的进步,大量的鸟类声音记录不断积累。由于手动分割和注释此数据是不切实际的,因此开发有效的算法来精确检测,分类和分割鸟鸣声是进行进一步分析的先决条件。在这项研究中,我们提出了一种自动分割和一种算法,用于一种鸟叫声(即颤音)的参数估计算法。该算法基于计算鸟声信号的基本频率导数的短时方差,以用于音节的初始检测。因此,使用高斯平滑短时能量函数和基于能量包络的自适应阈值来获得每个音节的边界。该算法的性能是通过与人类专家分割以及由谐波+噪声模型产生的合成颤音的地面真实值进行比较来评估的。对于具有加色噪声的信号,如果SNR级别为-5 dB或更高,则正确检测率将达到95%以上;对于具有SNR> -5dB的加性高斯白噪声,信号的正确检测率将达到92%以上。另外,例示了自动分割与人类专家的自动分割之间的高度相关性。

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