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.

Highlights

  • Previous studies have posited the use of acoustics-based surveys to monitor population size and estimate their density

  • This density estimation is mostly obtained through Spatially Explicit Capture-Recapture (SECR) that relies on multiple recording stations for Capture-Mark-Recapture (CMR), and instead of ‘recapture’ with time, it considers ‘redetection’ in different points in s­ pace[24,25,26]

  • The objective of discriminant function analysis (DFA) was to build an equation that discriminates the howls of different individuals

Read more

Summary

Introduction

Previous studies have posited the use of acoustics-based surveys to monitor population size and estimate their density. 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. Passive acoustics devices can operate throughout the day for weeks without intervention, and this perpetual data can be analysed with the advancement of methodologies for automating the p­ rocess[17] Recordings from these devices can be used in calculating a wide range of metrics including acoustic ­indices[18,19], animal ­diversity[19,20], animal ­localisation[21,22,23], and ­density[24,25] estimation. With the ability to identify individual wolves from howl recordings, information on population sizes, dispersal patterns, pack composition and the presence of pups could be obtained These would be used to develop conservation management strategies and to examine population trends with howl surveys conducted over multiple years. Our study aimed to record howls from Indian wolves (Canis lupus pallipes) and test the feasibility of identifying unknown individuals from their howls alone using a supervised classification method

Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call