A Classifier-Integrated Signal Extraction Approach for Time Difference Estimation in Acoustic Sensor Networks

26 Pages Posted: 22 Oct 2024

See all articles by Leonhard Brüggemann

Leonhard Brüggemann

University of Osnabrück

Mario Dyczka

Osnabrück University

Daniel Otten

Osnabrück University

Nils Aschenbruck

Osnabrück University

Date Written: August 20, 2024

Abstract

With the development of reliable AI-based species classifiers and the design of low-cost autonomous recording units, acoustic monitoring has become an emerging research field. Although strides are made in automated species monitoring, automated localization remains a significant challenge. Distinguishing and pinpointing bird sounds in noisy, reverberant, and dynamic natural environments is extremely difficult, ultimately deteriorating the accuracy of time difference estimations and, consequently, localization.

In this paper, we take a significant step towards reliable automated localization by presenting a viable and generalizable approach to extracting species-dependent signals from intermixed acoustics, which we call Classifier-Integrated Signal Extraction (CISE). These signals can be used to estimate precise time differences while retaining information for individual species. Our method seamlessly extends the current capabilities, requiring only minor modifications to state-of-the-art classifiers. We prove its applicability and usefulness by deploying it on bird acoustics using the popular bird species classifier BirdNet.

Suggested Citation

Brüggemann, Leonhard and Dyczka, Mario and Otten, Daniel and Aschenbruck, Nils, A Classifier-Integrated Signal Extraction Approach for Time Difference Estimation in Acoustic Sensor Networks (August 20, 2024). Available at SSRN: https://ssrn.com/abstract=4957052 or http://dx.doi.org/10.2139/ssrn.4957052

Leonhard Brüggemann (Contact Author)

University of Osnabrück ( email )

Mario Dyczka

Osnabrück University ( email )

Daniel Otten

Osnabrück University ( email )

Nils Aschenbruck

Osnabrück University ( email )

Do you have a job opening that you would like to promote on SSRN?

Paper statistics

Downloads
21
Abstract Views
82
PlumX Metrics