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Main Authors: Barry, Dan, Panah, Davoud Shariat, Ragano, Alessandro, Skoglund, Jan, Hines, Andrew
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2510.25714
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author Barry, Dan
Panah, Davoud Shariat
Ragano, Alessandro
Skoglund, Jan
Hines, Andrew
author_facet Barry, Dan
Panah, Davoud Shariat
Ragano, Alessandro
Skoglund, Jan
Hines, Andrew
contents We present Binaspect, an open-source Python library for binaural audio analysis, visualization, and feature generation. Binaspect generates interpretable "azimuth maps" by calculating modified interaural time and level difference spectrograms, and clustering those time-frequency (TF) bins into stable time-azimuth histogram representations. This allows multiple active sources to appear as distinct azimuthal clusters, while degradations manifest as broadened, diffused, or shifted distributions. Crucially, Binaspect operates blindly on audio, requiring no prior knowledge of head models. These visualizations enable researchers and engineers to observe how binaural cues are degraded by codec and renderer design choices, among other downstream processes. We demonstrate the tool on bitrate ladders, ambisonic rendering, and VBAP source positioning, where degradations are clearly revealed. In addition to their diagnostic value, the proposed representations can be exported as structured features suitable for training machine learning models in quality prediction, spatial audio classification, and other binaural tasks. Binaspect is released under an open-source license with full reproducibility scripts at https://github.com/QxLabIreland/Binaspect.
format Preprint
id arxiv_https___arxiv_org_abs_2510_25714
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Binaspect -- A Python Library for Binaural Audio Analysis, Visualization & Feature Generation
Barry, Dan
Panah, Davoud Shariat
Ragano, Alessandro
Skoglund, Jan
Hines, Andrew
Sound
We present Binaspect, an open-source Python library for binaural audio analysis, visualization, and feature generation. Binaspect generates interpretable "azimuth maps" by calculating modified interaural time and level difference spectrograms, and clustering those time-frequency (TF) bins into stable time-azimuth histogram representations. This allows multiple active sources to appear as distinct azimuthal clusters, while degradations manifest as broadened, diffused, or shifted distributions. Crucially, Binaspect operates blindly on audio, requiring no prior knowledge of head models. These visualizations enable researchers and engineers to observe how binaural cues are degraded by codec and renderer design choices, among other downstream processes. We demonstrate the tool on bitrate ladders, ambisonic rendering, and VBAP source positioning, where degradations are clearly revealed. In addition to their diagnostic value, the proposed representations can be exported as structured features suitable for training machine learning models in quality prediction, spatial audio classification, and other binaural tasks. Binaspect is released under an open-source license with full reproducibility scripts at https://github.com/QxLabIreland/Binaspect.
title Binaspect -- A Python Library for Binaural Audio Analysis, Visualization & Feature Generation
topic Sound
url https://arxiv.org/abs/2510.25714