DISCO: A deep learning ensemble for uncertainty-aware segmentation of acoustic signals

Author:

Colligan Thomas,Irish Kayla,Emlen Douglas J.,Wheeler Travis J.ORCID

Abstract

Recordings of animal sounds enable a wide range of observational inquiries into animal communication, behavior, and diversity. Automated labeling of sound events in such recordings can improve both throughput and reproducibility of analysis. Here, we describe our software package for labeling elements in recordings of animal sounds, and demonstrate its utility on recordings of beetle courtships and whale songs. The software, DISCO, computes sensible confidence estimates and produces labels with high precision and accuracy. In addition to the core labeling software, it provides a simple tool for labeling training data, and a visual system for analysis of resulting labels. DISCO is open-source and easy to install, it works with standard file formats, and it presents a low barrier of entry to use.

Funder

National Institute of General Medical Sciences (NIGMS), National Institutes of Health

Division of Integrative Organismal Systems (IOS), National Science Foundation

Publisher

Public Library of Science (PLoS)

Subject

Multidisciplinary

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