Individualizing Head-Related Transfer Functions for Binaural Acoustic Applications
Navid H. Zandi, Awny M. El-Mohandes, Rong Zheng

TL;DR
This paper introduces a lightweight, user-friendly method for individualizing head-related transfer functions (HRTFs) using neural networks and simple measurements, significantly enhancing binaural sound localization and spatialization accuracy.
Contribution
A novel neural network-based approach for personalized HRTF estimation that can be performed with off-the-shelf components in home environments.
Findings
Improved localization accuracy by 15 degrees.
183% increase in correct azimuth identification.
Outperforms baseline models in HRTF prediction.
Abstract
A Head Related Transfer Function (HRTF) characterizes how a human ear receives sounds from a point in space, and depends on the shapes of one's head, pinna, and torso. Accurate estimations of HRTFs for human subjects are crucial in enabling binaural acoustic applications such as sound localization and 3D sound spatialization. Unfortunately, conventional approaches for HRTF estimation rely on specialized devices or lengthy measurement processes. This work proposes a novel lightweight method for HRTF individualization that can be implemented using commercial-off-the-shelf components and performed by average users in home settings. The proposed method has two key components: a generative neural network model that can be individualized to predict HRTFs of new subjects from sparse measurements, and a lightweight measurement procedure that collects HRTF data from spatial locations. Extensive…
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Taxonomy
TopicsSpeech and Audio Processing · Hearing Loss and Rehabilitation · Noise Effects and Management
