Department of Life Sciences, Graduate School of Arts & Sciences, The University of Tokyo, Tokyo, Japan.
Laboratory of Neuroscience, Course of Psychology, Department of Humanities, Faculty of Law, Economics and the Humanities, Kagoshima University, Kagoshima, Japan.
PLoS One. 2020 Feb 10;15(2):e0228907. doi: 10.1371/journal.pone.0228907. eCollection 2020.
Rodents' ultrasonic vocalizations (USVs) provide useful information for assessing their social behaviors. Despite previous efforts in classifying subcategories of time-frequency patterns of USV syllables to study their functional relevance, methods for detecting vocal elements from continuously recorded data have remained sub-optimal. Here, we propose a novel procedure for detecting USV segments in continuous sound data containing background noise recorded during the observation of social behavior. The proposed procedure utilizes a stable version of the sound spectrogram and additional signal processing for better separation of vocal signals by reducing the variation of the background noise. Our procedure also provides precise time tracking of spectral peaks within each syllable. We demonstrated that this procedure can be applied to a variety of USVs obtained from several rodent species. Performance tests showed this method had greater accuracy in detecting USV syllables than conventional detection methods.
啮齿动物的超声波发声(USV)为评估它们的社交行为提供了有用的信息。尽管之前已经有努力对 USV 音节的时频模式进行分类,以研究其功能相关性,但从连续记录的数据中检测声音元素的方法仍然不尽如人意。在这里,我们提出了一种新的程序,用于检测在观察社交行为期间记录的包含背景噪声的连续声音数据中的 USV 段。所提出的程序利用了声音频谱图的稳定版本和额外的信号处理,通过减少背景噪声的变化,更好地分离声音信号。我们的程序还提供了每个音节内频谱峰值的精确时间跟踪。我们证明,该程序可应用于从几种啮齿动物物种获得的各种 USV。性能测试表明,与传统检测方法相比,该方法在检测 USV 音节方面具有更高的准确性。