Litcius/Paper detail

A wide dataset of ear shapes and pinna-related transfer functions generated by random ear drawings

Corentin Guezenoc, Renaud Séguier

2020The Journal of the Acoustical Society of America21 citationsDOIOpen Access PDF

Abstract

Head-related transfer function individualization is a key matter in binaural synthesis. However, currently available databases are limited in size compared to the high dimensionality of the data. In this paper, the process of generating a synthetic dataset of 1000 ear shapes and matching sets of pinna-related transfer functions (PRTFs), named WiDESPREaD (wide dataset of ear shapes and pinna-related transfer functions obtained by random ear drawings), is presented and made freely available to other researchers. Contributions in this article are threefold. First, from a proprietary dataset of 119 three-dimensional left-ear scans, a matching dataset of PRTFs was built by performing fast-multipole boundary element method (FM-BEM) calculations. Second, the underlying geometry of each type of high-dimensional data was investigated using principal component analysis. It was found that this linear machine-learning technique performs better at modeling and reducing data dimensionality on ear shapes than on matching PRTF sets. Third, based on these findings, a method was devised to generate an arbitrarily large synthetic database of PRTF sets that relies on the random drawing of ear shapes and subsequent FM-BEM computations.

Topics & Concepts

Transfer functionCurse of dimensionalityComputer scienceBinaural recordingMatching (statistics)Pattern recognition (psychology)Principal component analysisProcess (computing)Artificial intelligenceFunction (biology)Key (lock)Boundary (topology)Transfer (computing)Synthetic dataDimensionality reductionAlgorithmTransformation (genetics)Speech recognitionRandomnessTransfer of learningRandom forestMathematicsEar Surgery and Otitis MediaReconstructive Facial Surgery TechniquesSpeech and Audio Processing