A machine learning framework to classify Southeast Asian echolocating bats

Natalie, Yoh and Tigga, Kingston and Ellen, McArthur and Aylen, Oliver E. and Huang, Joe Chun-Chia and Emy Ritta, Jinggong and Faisal Ali, Anwarali Khan and Lee, Benjamin P.Y.H and Mitchell, Simon L. and Bicknell, Jake E. (2022) A machine learning framework to classify Southeast Asian echolocating bats. Ecological Indicators, 136. pp. 1-13. ISSN 1470-160X

[img] PDF
A machine learning framework.pdf

Download (223kB)
Official URL: https://www.sciencedirect.com/science/article/pii/...

Abstract

Bats comprise a quarter of all mammal species, provide key ecosystem services and serve as effective bioindicators. Automated methods for classifying echolocation calls of free-flying bats are useful for monitoring but are not widely used in the tropics. This is particularly problematic in Southeast Asia, which supports more than 388 bat species. Here, sparse reference call databases and significant overlap among species call characteristics makes the development of automated processing methods complex. To address this, we outline a semi-automated framework for classifying bat calls in Southeast Asia and demonstrate how this can reliably speed up manual data processing. We implemented the framework to develop a classifier for the bats of Borneo and tested this at a landscape in Sabah. Borneo has a relatively well-described bat fauna, including reference calls for 52% of all 81 known echolocating species on the island. We applied machine learning to classify calls into one of four call types that serve as indicators of dominant ecological ensembles: frequency-modulated (FM; forest-specialists), constant frequency (CF; forest-specialists and edge/gap foragers), quasi-constant frequency (QCF; edge/gap foragers), and frequency-modulated quasi constant frequency (FMqCF; edge/gap and open-space foragers) calls. Where possible, we further identified calls to species/sonotype. Each classification is provided with a confidence value and a recommended threshold for manual verification. Of the 245,991 calls recorded in our test landscape, 85% were correctly identified to call type and only 10% needed manual verification for three of the call types. The classifier was most successful at classifying CF calls, reducing the volume of calls to be manually verified by over 95% for three common species. The most difficult bats to classify were those with FMqCF calls, with only a 52% reduction in files. Our framework allows users to rapidly filter acoustic files for common species and isolate files of interest, cutting the total volume of data to be processed by 86%. This provides an alternative method where species-specific classifiers are not yet feasible and enables researchers to expand non-invasive monitoring of bat species. Notably, this approach incorporates aerial insectivorous ensembles that are regularly absent from field datasets despite being important components of the bat community, thus improving our capacity to monitor bats remotely in tropical landscapes.

Item Type: Article
Uncontrolled Keywords: Acoustic monitoring, Chiroptera, Echolocation, Southeast Asia, Machine learning, Supervised algorithm.
Subjects: Q Science > QL Zoology
Divisions: Academic Faculties, Institutes and Centres > Faculty of Resource Science and Technology
Faculties, Institutes, Centres > Faculty of Resource Science and Technology
Depositing User: Gani
Date Deposited: 09 Mar 2022 02:19
Last Modified: 09 Mar 2022 02:19
URI: http://ir.unimas.my/id/eprint/38037

Actions (For repository members only: login required)

View Item View Item