Dear MARMAM readers,

we are pleased to announce the publication of our Methods Article in Frontiers 
in Marine Science - Section: Marine Megafauna.

Caruso F, Dong L, Lin M, Liu M, Gong Z, Xu W, Alonge G and Li S (2020). 
Monitoring of a Nearshore Small Dolphin Species Using Passive Acoustic 
Platforms and Supervised Machine Learning Techniques. Front. Mar. Sci. 7:267. 
doi: 10.3389/fmars.2020.00267

ABSTRACT: Passive acoustic monitoring (PAM) is increasingly being adopted as a 
non-invasive method for the assessment of ocean ecological dynamics. PAM is an 
important sampling approach for acquiring critical information about marine 
mammals, especially in areas where data are lacking and where evaluations of 
threats for vulnerable populations are required. The Indo-Pacific humpback 
dolphin (IPHD, Sousa chinensis) is a coastal species which inhabits tropical 
and warm-temperate waters from the eastern Indian Ocean throughout Southeast 
Asia to central China. A new population of this species was recently discovered 
in waters southwest of Hainan Island, China. An array of passive acoustic 
platforms was deployed at depths of 10–20 m (the preferred habitat of humpback 
dolphins), across sites covering more than 100 km of coastline. In this study, 
we explored whether the acoustic data recorded by the array could be used to 
classify IPHD echolocation clicks, with the aim of investigating the 
spatiotemporal patterns of distribution and acoustic behavior of this species. 
A number of supervised machine learning algorithms were trained to 
automatically classify echolocation clicks from the different types of 
short-broadband pulses recorded. The best performance was reported by a cubic 
support vector machine (Cubic SVM), which was applied to 19,215 5-min 
recordings (∼4.2 TB), collected over a period of 75 days at six locations. 
Subsequently, using spectrogram visualization and audio listening, human 
operators confirmed the presence of clicks within the selected files. 
Additionally, other dolphin vocalizations (including whistles, buzzes, and 
burst pulses) and different sound sources (soniferous fishes, snapping shrimps, 
human activities) were also reported. The detection range of IPHD clicks was 
estimated using a transmission loss (TL) model and the performance of the 
trained classifier was compared with data synchronously collected by an 
acoustic data logger (A-tag). This study demonstrates that the distribution and 
habitat use of a coastal and resident dolphin species can be monitored over a 
large spatiotemporal scale, using an array of passive acoustic platforms and a 
data analysis protocol that includes both machine learning techniques and 
spectrogram inspection.

The article is available at: https://doi.org/10.3389/fmars.2020.00267.

Best regards,

Francesco




Francesco Caruso, Ph.D. - Postdoctoral Researcher


Marine Mammal and Marine Bioacoustics Laboratory

Institute of Deep-sea Science and Engineering

Chinese Academy of Sciences

28 Luhuitou Road, Sanya, 572000, China








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