Data-based and learning-based sound source localization (SSL) has shown promising results in challenging conditions, and is commonly set as a classification or a regression problem. Regression-based approaches have certain advantages over classification-based, such as continuous direction-of-arrival estimation of static and moving sources. However, multi-source scenarios require multiple regressors without a clear training strategy up-to-date, that does not rely on auxiliary information such as simultaneous sound classification. We investigate end-to-end training of such methods with a technique recently proposed for video object detectors, adapted to the SSL setting. A differentiable network is constructed that can be plugged to the output of the localizer to solve the optimal assignment between predictions and references, optimizing directly the popular CLEAR-MOT tracking metrics. Results indicate large improvements over directly optimizing mean squared errors, in terms of localization error, detection metrics, and tracking capabilities.
Differentiable Tracking-Based Training of Deep Learning Sound Source Localizers
End-to-end training of a differentiable network for sound source localization improves localization error, detection metrics, and tracking capabilities in multi-source scenarios.
- Year
- 2021
- Venue
- arXiv 2021
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- 3
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2111.00030ARXIV-DEFAULT
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