Bioacoustics Group, Centre for Ultrasonic Engineering, Department of Electronic and Electrical Engineering, University of Strathclyde, 99 George Street, G1 1RD Glasgow, United Kingdom.
Department of Bioscience, Aarhus University, Frederiksborgvej 399, 4000 Roskilde, Denmark.
J Acoust Soc Am. 2019 Jun;145(6):3427. doi: 10.1121/1.5110908.
Harbour porpoises are well-suited for passive acoustic monitoring (PAM) as they produce highly stereotyped narrow-band high-frequency (NBHF) echolocation clicks. PAM systems must be coupled with a classification algorithm to identify the signals of interest. Here, the authors present a harbour porpoise click classifier (PorCC) developed in matlab, which uses the coefficients of two logistic regression models in a decision-making pathway to assign candidate signals to one of three categories: high-quality clicks (HQ), low-quality clicks (LQ), or high-frequency noise. The receiver operating characteristics of PorCC was compared to that of PAMGuard's Porpoise Click Detector/Classifier Module. PorCC outperformed PAMGuard's classifier achieving higher hit rates (correctly classified clicks) and lower false alarm levels (noise classified as HQ or LQ clicks). Additionally, the detectability index (d') for HQ clicks for PAMGuard was 2.2 (overall d' = 2.0) versus 4.1 for PorCC (overall d' = 3.4). PorCC classification algorithm is a rapid and highly accurate method to classify NBHF clicks, which could be applied for real time monitoring, as well as to study harbour porpoises, and potentially other NBHF species, throughout their distribution range from data collected using towed hydrophones or static recorders. Moreover, PorCC is suitable for studies of acoustic communication of porpoises.
港海豚非常适合被动声学监测(PAM),因为它们会产生高度定型的窄带高频(NBHF)回声定位咔哒声。PAM 系统必须与分类算法相结合,以识别感兴趣的信号。在这里,作者介绍了一种在 matlab 中开发的港海豚咔哒声分类器(PorCC),它使用两个逻辑回归模型的系数在决策路径中对候选信号进行分类,将其分为三类:高质量咔哒声(HQ)、低质量咔哒声(LQ)或高频噪声。PorCC 的接收机工作特性与 PAMGuard 的海豚咔哒声检测器/分类器模块进行了比较。PorCC 的性能优于 PAMGuard 的分类器,具有更高的命中率(正确分类的咔哒声)和更低的误报率(将 HQ 或 LQ 咔哒声分类为噪声)。此外,PAMGuard 的 HQ 咔哒声的可检测性指数(d')为 2.2(总体 d'=2.0),而 PorCC 的 d'为 4.1(总体 d'=3.4)。PorCC 分类算法是一种快速且高度准确的 NBHF 咔哒声分类方法,可用于实时监测,以及对海豚以及潜在的其他 NBHF 物种进行研究,其应用范围涵盖了使用拖曳式水听器或静态记录器收集的数据。此外,PorCC 还适用于海豚声通讯的研究。