Conformal Prediction for Manifold-based Source Localization with Gaussian Processes
Vadim Rozenfeld, Bracha Laufer Goldshtein

TL;DR
This paper introduces a semi-supervised conformal prediction framework combined with Gaussian process regression for sound source localization, providing valid uncertainty estimates with smaller prediction intervals in challenging acoustic environments.
Contribution
It develops a novel transductive conformal prediction method tailored for Gaussian processes, enabling effective uncertainty quantification with limited labeled data in source localization.
Findings
Statistically valid prediction intervals across various acoustic conditions.
Smaller prediction intervals compared to baseline methods.
Effective semi-supervised approach for source localization uncertainty quantification.
Abstract
We address the problem of uncertainty quantification (UQ) in the localization of a sound source within adverse acoustic environments. Estimating the position of the source is influenced by various factors, such as noise and reverberation, leading to significant uncertainty. Quantifying this uncertainty is essential, particularly when localization outcomes impact critical decision-making processes, such as in robot audition, where the accuracy of location estimates directly influences subsequent actions. Despite this, common localization methods offer point estimates without quantifying the estimation uncertainty. To address this, we employ conformal prediction (CP)-a framework that delivers statistically valid prediction intervals (PIs) with finite-sample guarantees, independent of the data distribution. However, commonly used Inductive CP (ICP) methods require a large amount of labeled…
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Taxonomy
TopicsTarget Tracking and Data Fusion in Sensor Networks · Gaussian Processes and Bayesian Inference · Robotics and Sensor-Based Localization
MethodsGaussian Process
