Litcius/Paper detail

Automated extraction of dolphin whistles—A sequential Monte Carlo probability hypothesis density approach

Pina Gruden, Paul R. White

2020The Journal of the Acoustical Society of America30 citationsDOIOpen Access PDF

Abstract

The need for automated methods to detect and extract marine mammal vocalizations from acoustic data has increased in the last few decades due to the increased availability of long-term recording systems. Automated dolphin whistle extraction represents a challenging problem due to the time-varying number of overlapping whistles present in, potentially, noisy recordings. Typical methods utilize image processing techniques or single target tracking, but often result in fragmentation of whistle contours and/or partial whistle detection. This study casts the problem into a more general statistical multi-target tracking framework and uses the probability hypothesis density filter as a practical approximation to the optimal Bayesian multi-target filter. In particular, a particle version, referred to as a sequential Monte Carlo probability hypothesis density (SMC-PHD) filter, is adapted for frequency tracking and specific models are developed for this application. Based on these models, two versions of the SMC-PHD filter are proposed and the performance of these versions is investigated on an extensive real-world dataset of dolphin acoustic recordings. The proposed filters are shown to be efficient tools for automated extraction of whistles, suitable for real-time implementation.

Topics & Concepts

Particle filterComputer scienceFilter (signal processing)Bayesian probabilityMonte Carlo methodArtificial intelligenceTracking (education)Posterior probabilityNoise (video)Computer visionPattern recognition (psychology)Image (mathematics)MathematicsStatisticsPsychologyPedagogyMarine animal studies overviewUnderwater Acoustics ResearchMaritime Navigation and Safety