HRTF individualization using deep learning

Riccardo Miccini, Simone Spagnol*

*Kontaktforfatter

Publikation: Bidrag til bog/antologi/rapport/konference proceedingKonferenceartikel i proceedingForskningpeer review

27 Citationer (Scopus)
495 Downloads (Pure)

Abstract

The research presented in this paper focuses on Head-Related Transfer Function (HRTF) individualization using deep learning techniques. HRTF individualization is paramount for accurate binaural rendering, which is used in XR technologies, tools for the visually impaired, and many other applications. The rising availability of public HRTF data currently allows experimentation with different input data formats and various computational models. Accordingly, three research directions are investigated here: (1) extraction of predictors from user data; (2) unsupervised learning of HRTFs based on autoencoder networks; and (3) synthesis of HRTFs from anthropometric data using deep multilayer perceptrons and principal component analysis. While none of the aforementioned investigations has shown outstanding results to date, the knowledge acquired throughout the development and troubleshooting phases highlights areas of improvement which are expected to pave the way to more accurate models for HRTF individualization.
OriginalsprogEngelsk
TitelProceedings of the 2020 IEEE Conference on Virtual Reality and 3D User Interfaces Workshops (VRW 2020)
Antal sider6
UdgivelsesstedAtlanta, GA, US
ForlagIEEE
Publikationsdatomar. 2020
Sider390-395
Artikelnummer9090538
ISBN (Elektronisk)978-1-7281-6532-5
DOI
StatusUdgivet - mar. 2020
Begivenhed2020 IEEE Conference on Virtual Reality and 3D User Interfaces Workshops (VRW 2020) -
Varighed: 22 mar. 202022 mar. 2020

Konference

Konference2020 IEEE Conference on Virtual Reality and 3D User Interfaces Workshops (VRW 2020)
Periode22/03/202022/03/2020

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