Detecting bird sound in unknown acoustic background using crowdsourced training data

T Papadopoulos, S Roberts, K Willis - arXiv preprint arXiv:1505.06443, 2015 - arxiv.org
T Papadopoulos, S Roberts, K Willis
arXiv preprint arXiv:1505.06443, 2015arxiv.org
Biodiversity monitoring using audio recordings is achievable at a truly global scale via large-
scale deployment of inexpensive, unattended recording stations or by large-scale
crowdsourcing using recording and species recognition on mobile devices. The ability,
however, to reliably identify vocalising animal species is limited by the fact that acoustic
signatures of interest in such recordings are typically embedded in a diverse and complex
acoustic background. To avoid the problems associated with modelling such backgrounds …
Biodiversity monitoring using audio recordings is achievable at a truly global scale via large-scale deployment of inexpensive, unattended recording stations or by large-scale crowdsourcing using recording and species recognition on mobile devices. The ability, however, to reliably identify vocalising animal species is limited by the fact that acoustic signatures of interest in such recordings are typically embedded in a diverse and complex acoustic background. To avoid the problems associated with modelling such backgrounds, we build generative models of bird sounds and use the concept of novelty detection to screen recordings to detect sections of data which are likely bird vocalisations. We present detection results against various acoustic environments and different signal-to-noise ratios. We discuss the issues related to selecting the cost function and setting detection thresholds in such algorithms. Our methods are designed to be scalable and automatically applicable to arbitrary selections of species depending on the specific geographic region and time period of deployment.
arxiv.org
Showing the best result for this search. See all results