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Job Pxpq8pbgspk45x

Post-DocApplications Closed

Dan Goodman

Unknown Organization
London, UK
Apply by Sep 20, 2021

Application deadline

Sep 20, 2021

Job location

Job location

Dan Goodman

Geocoding

London, UK

Geocoding is still running and results will appear soon.

Source: legacy

Quick Information

Application Deadline

Sep 20, 2021

Start Date

Flexible

Education Required

See description

Experience Level

Not specified

Job location

Job location

Dan Goodman

Geocoding

London, UK

Geocoding is still running and results will appear soon.

Source: legacy

World Wide map

Job Description

We have a research associate (postdoc) position to work on spatial audio processing and spatial hearing using methods from machine learning. The aim of the project is to design a method for interactively fitting individualised filters for spatial audio (HRTFs) to users in real-time based on their interactions with a VR/AR environment. We will use meta-learning algorithms to minimise the time required to individualise the filters, using simulated and real interactions with large databases of synthetic and measured filters. The project has potential to become a very widely used tool in academia and industry, as existing methods for recording individualised filters are often expensive, slow, and not widely available for consumers.

The role is initially available for up to 18 months, ideally starting on or soon after 1st January 2022 (although there is flexibility). The role is based in the Neural Reckoning group led by Dan Goodman in the Electrical and Electronic Engineering Department of Imperial College. You will work with other groups at Imperial, as well as with a wider consortium of universities and companies in the SONICOM project (€5.7m EU grant), led by Lorenzo Picinali at Imperial.

Requirements

  • Essential requirements
  • We are looking for applicants with a PhD in spatial audio
  • audio technologies
  • acoustics or machine learning
  • or a related discipline. Ideally
  • you will have one or more of the following:
  • Experience of applying methods from machine learning (ideally in meta-learning algorithms
  • although this is not essential).
  • Experience with spatial audio (for example
  • HRTFs
  • models of the binaural auditory system).
  • In addition
  • you will have:
  • Published high quality papers in machine learning or spatial audio/hearing.
  • Excellent programming skills
  • especially in Python for machine learning
  • Excellent verbal and written communication skills.
  • Willingness to work as part of a team and to be open-minded and cooperative both internally and with external project partners.
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