eCommons

 

Customizing Deep Neural Networks for Call-Type Distinction in Eastern Meadowlark (Sturnella magna): Investigating links with Land Use, Behavioral Ecology, and Conservation

Other Titles

Abstract

Grassland birds are experiencing steep population declines across North America due to habitat loss, agricultural intensification, and land-use change. The Eastern Meadowlark (Sturnella magna) has declined by over 75% since 1966 and serves as an important indicator of grassland ecosystem health. We utilized passive acoustic monitoring (PAM) and a custom BirdNET classifier to examine the spatial and temporal variation in Eastern Meadowlark vocalizations, songs, and calls across 45 grassland sites in New York State. We analyzed how vocalization frequency varied across management regimes, land-use types, regions, and the breeding season. A total of 143,305 songs and 11,489 calls were detected and analyzed using generalized additive models (GAMs). Results showed that song was significantly influenced by geographic region and date, and call was significantly influenced by date. Song rates increased in later parts of the season and were significantly higher in the Eastern region, while call frequency remained relatively stable with a slight increase at the end of the season. No significant effects were found for land cover, management regime, or protected versus working land status. These results show how PAM and call-type classification can provide insights into the differential roles of vocalization types in avian behavioral ecology. Future work should explore multi-year trends, additional sites, and juvenile versus adult vocalization patterns, and additional local and regional landscape variables.

Journal / Series

Volume & Issue

Description

Sponsorship

USGS New York Cooperative Fish and Wildlife Research Unit and New York State Department of Environmental Conservation

Date Issued

2025-04

Publisher

Keywords

Sturnella magna; Bioacoustics; Conservation

Location

Effective Date

Expiration Date

Sector

Employer

Union

Union Local

NAICS

Number of Workers

Committee Chair

Committee Co-Chair

Committee Member

Degree Discipline

Degree Name

Degree Level

Related Version

Related DOI

Related To

Related Part

Based on Related Item

Has Other Format(s)

Part of Related Item

Related To

Related Publication(s)

Link(s) to Related Publication(s)

References

Link(s) to Reference(s)

Previously Published As

Government Document

ISBN

ISMN

ISSN

Other Identifiers

Rights

Rights URI

Types

dissertation or thesis

Accessibility Feature

Accessibility Hazard

Accessibility Summary

Link(s) to Catalog Record