Cortical adaptation to sound reverberation
Ivanov, Aleksandar et al. (2022), Cortical adaptation to sound reverberation, Dryad, Dataset, https://doi.org/10.5061/dryad.1c59zw3xv
In almost every natural environment, sounds are reflected by nearby objects, producing many delayed and distorted copies of the original sound, known as reverberation. Our brains usually cope well with reverberation, allowing us to recognize sound sources regardless of their environments. In contrast, reverberation can cause severe difficulties for speech recognition algorithms and hearing-impaired people. The present study examines how the auditory system copes with reverberation. We trained a linear model to recover a rich set of natural, anechoic sounds from their simulated reverberant counterparts. The model neurons achieved this by extending the inhibitory component of their receptive filters for more reverberant spaces, and did so in a frequency-dependent manner. These predicted effects were observed in the responses of auditory cortical neurons of ferrets in the same simulated reverberant environments. Together, these results suggest that auditory cortical neurons adapt to reverberation by adjusting their filtering properties in a manner consistent with dereverberation.
Spike data were recorded using Neuropixels electrodes in the auditory cortex of anaesthetised ferrets.
We have provided our Matlab scripts for generating our figures on Github: https://github.com/PhantomSpike/DeReverb
Wellcome Trust, Award: WT108369/Z/2015/Z
Biotechnology and Biological Sciences Research Council, Award: BB/M010929/1