Identifying unknown Indian wolves by their distinctive howls: its potential as a non-invasive survey method

Abstract Previous studies have posited the use of acoustics-based surveys to monitor population size and estimate their density. However, decreasing the bias in population estimations, such as by using Capture–Mark–Recapture, requires the identification of individuals using supervised classification...

Full description

Bibliographic Details
Main Authors: Sougata Sadhukhan, Holly Root-Gutteridge, Bilal Habib
Format: Article
Language:English
Published: Nature Publishing Group 2021-03-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-021-86718-w
id doaj-9de6f0aea3194b5197fb348d38402d92
record_format Article
spelling doaj-9de6f0aea3194b5197fb348d38402d922021-04-04T11:31:31ZengNature Publishing GroupScientific Reports2045-23222021-03-0111111310.1038/s41598-021-86718-wIdentifying unknown Indian wolves by their distinctive howls: its potential as a non-invasive survey methodSougata Sadhukhan0Holly Root-Gutteridge1Bilal Habib2Animal Ecology and Conservation Biology, Wildlife Institute of IndiaAnimal Behaviour, Cognition and Welfare Group, University of LincolnAnimal Ecology and Conservation Biology, Wildlife Institute of IndiaAbstract Previous studies have posited the use of acoustics-based surveys to monitor population size and estimate their density. However, decreasing the bias in population estimations, such as by using Capture–Mark–Recapture, requires the identification of individuals using supervised classification methods, especially for sparsely populated species like the wolf which may otherwise be counted repeatedly. The cryptic behaviour of Indian wolf (Canis lupus pallipes) poses serious challenges to survey efforts, and thus, there is no reliable estimate of their population despite a prominent role in the ecosystem. Like other wolves, Indian wolves produce howls that can be detected over distances of more than 6 km, making them ideal candidates for acoustic surveys. Here, we explore the use of a supervised classifier to identify unknown individuals. We trained a supervised Agglomerative Nesting hierarchical clustering (AGNES) model using 49 howls from five Indian wolves and achieved 98% individual identification accuracy. We tested our model’s predictive power using 20 novel howls from a further four individuals (test dataset) and resulted in 75% accuracy in classifying howls to individuals. The model can reduce bias in population estimations using Capture-Mark-Recapture and track individual wolves non-invasively by their howls. This has potential for studies of wolves’ territory use, pack composition, and reproductive behaviour. Our method can potentially be adapted for other species with individually distinctive vocalisations, representing an advanced tool for individual-level monitoring.https://doi.org/10.1038/s41598-021-86718-w
collection DOAJ
language English
format Article
sources DOAJ
author Sougata Sadhukhan
Holly Root-Gutteridge
Bilal Habib
spellingShingle Sougata Sadhukhan
Holly Root-Gutteridge
Bilal Habib
Identifying unknown Indian wolves by their distinctive howls: its potential as a non-invasive survey method
Scientific Reports
author_facet Sougata Sadhukhan
Holly Root-Gutteridge
Bilal Habib
author_sort Sougata Sadhukhan
title Identifying unknown Indian wolves by their distinctive howls: its potential as a non-invasive survey method
title_short Identifying unknown Indian wolves by their distinctive howls: its potential as a non-invasive survey method
title_full Identifying unknown Indian wolves by their distinctive howls: its potential as a non-invasive survey method
title_fullStr Identifying unknown Indian wolves by their distinctive howls: its potential as a non-invasive survey method
title_full_unstemmed Identifying unknown Indian wolves by their distinctive howls: its potential as a non-invasive survey method
title_sort identifying unknown indian wolves by their distinctive howls: its potential as a non-invasive survey method
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-03-01
description Abstract Previous studies have posited the use of acoustics-based surveys to monitor population size and estimate their density. However, decreasing the bias in population estimations, such as by using Capture–Mark–Recapture, requires the identification of individuals using supervised classification methods, especially for sparsely populated species like the wolf which may otherwise be counted repeatedly. The cryptic behaviour of Indian wolf (Canis lupus pallipes) poses serious challenges to survey efforts, and thus, there is no reliable estimate of their population despite a prominent role in the ecosystem. Like other wolves, Indian wolves produce howls that can be detected over distances of more than 6 km, making them ideal candidates for acoustic surveys. Here, we explore the use of a supervised classifier to identify unknown individuals. We trained a supervised Agglomerative Nesting hierarchical clustering (AGNES) model using 49 howls from five Indian wolves and achieved 98% individual identification accuracy. We tested our model’s predictive power using 20 novel howls from a further four individuals (test dataset) and resulted in 75% accuracy in classifying howls to individuals. The model can reduce bias in population estimations using Capture-Mark-Recapture and track individual wolves non-invasively by their howls. This has potential for studies of wolves’ territory use, pack composition, and reproductive behaviour. Our method can potentially be adapted for other species with individually distinctive vocalisations, representing an advanced tool for individual-level monitoring.
url https://doi.org/10.1038/s41598-021-86718-w
work_keys_str_mv AT sougatasadhukhan identifyingunknownindianwolvesbytheirdistinctivehowlsitspotentialasanoninvasivesurveymethod
AT hollyrootgutteridge identifyingunknownindianwolvesbytheirdistinctivehowlsitspotentialasanoninvasivesurveymethod
AT bilalhabib identifyingunknownindianwolvesbytheirdistinctivehowlsitspotentialasanoninvasivesurveymethod
_version_ 1721542663326400512