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Towards modelling active sound localisation based on Bayesian inference in a static environment

Glen McLachlan, Piotr Majdak, Jonas Reijniers, Herbert Peremans

2021Acta Acustica29 citationsDOIOpen Access PDF

Abstract

Over the decades, Bayesian statistical inference has become a staple technique for modelling human multisensory perception. Many studies have successfully shown how sensory and prior information can be combined to optimally interpret our environment. Because of the multiple sound localisation cues available in the binaural signal, sound localisation models based on Bayesian inference are a promising way of explaining behavioural human data. An interesting aspect is the consideration of dynamic localisation cues obtained through self-motion. Here we provide a review of the recent developments in modelling dynamic sound localisation with a particular focus on Bayesian inference. Further, we describe a theoretical Bayesian framework capable to model dynamic and active listening situations in humans in a static auditory environment. In order to demonstrate its potential in future implementations, we provide results from two examples of simplified versions of that framework.

Topics & Concepts

Computer scienceInferenceBayesian inferenceBayesian probabilityBinaural recordingArtificial intelligenceFocus (optics)PerceptionMachine learningDynamic Bayesian networkSpeech recognitionPsychologyNeurosciencePhysicsOpticsHearing Loss and RehabilitationMultisensory perception and integrationSpeech and Audio Processing
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