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Main Authors: De Rus, Juan Antonio, Montagud, Mario, Lopez-Ballester, Jesus, Ferri, Francesc J., Cobos, Maximo
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2503.11312
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author De Rus, Juan Antonio
Montagud, Mario
Lopez-Ballester, Jesus
Ferri, Francesc J.
Cobos, Maximo
author_facet De Rus, Juan Antonio
Montagud, Mario
Lopez-Ballester, Jesus
Ferri, Francesc J.
Cobos, Maximo
contents Precise elevation perception in binaural audio remains a challenge, despite extensive research on head-related transfer functions (HRTFs) and spectral cues. While prior studies have advanced our understanding of sound localization cues, the interplay between spectral features and elevation perception is still not fully understood. This paper presents a comprehensive analysis of over 600 subjects from 11 diverse public HRTF datasets, employing a convolutional neural network (CNN) model combined with explainable artificial intelligence (XAI) techniques to investigate elevation cues. In addition to testing various HRTF pre-processing methods, we focus on both within-dataset and inter-dataset generalization and explainability, assessing the model's robustness across different HRTF variations stemming from subjects and measurement setups. By leveraging class activation mapping (CAM) saliency maps, we identify key frequency bands that may contribute to elevation perception, providing deeper insights into the spectral features that drive elevation-specific classification. This study offers new perspectives on HRTF modeling and elevation perception by analyzing diverse datasets and pre-processing techniques, expanding our understanding of these cues across a wide range of conditions.
format Preprint
id arxiv_https___arxiv_org_abs_2503_11312
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Data-Driven Exploration of Elevation Cues in HRTFs: An Explainable AI Perspective Across Multiple Datasets
De Rus, Juan Antonio
Montagud, Mario
Lopez-Ballester, Jesus
Ferri, Francesc J.
Cobos, Maximo
Signal Processing
Sound
Audio and Speech Processing
Precise elevation perception in binaural audio remains a challenge, despite extensive research on head-related transfer functions (HRTFs) and spectral cues. While prior studies have advanced our understanding of sound localization cues, the interplay between spectral features and elevation perception is still not fully understood. This paper presents a comprehensive analysis of over 600 subjects from 11 diverse public HRTF datasets, employing a convolutional neural network (CNN) model combined with explainable artificial intelligence (XAI) techniques to investigate elevation cues. In addition to testing various HRTF pre-processing methods, we focus on both within-dataset and inter-dataset generalization and explainability, assessing the model's robustness across different HRTF variations stemming from subjects and measurement setups. By leveraging class activation mapping (CAM) saliency maps, we identify key frequency bands that may contribute to elevation perception, providing deeper insights into the spectral features that drive elevation-specific classification. This study offers new perspectives on HRTF modeling and elevation perception by analyzing diverse datasets and pre-processing techniques, expanding our understanding of these cues across a wide range of conditions.
title A Data-Driven Exploration of Elevation Cues in HRTFs: An Explainable AI Perspective Across Multiple Datasets
topic Signal Processing
Sound
Audio and Speech Processing
url https://arxiv.org/abs/2503.11312