TL;DR
This paper introduces a Bayesian framework for joint reconstruction of signals in time and frequency domains, effectively handling missing data and noise, and providing uncertainty quantification.
Contribution
It proposes a novel probabilistic model for simultaneous time-frequency signal reconstruction that is robust to incomplete and noisy data, advancing spectral analysis methods.
Findings
Successfully reconstructs real-world audio, healthcare, and astronomy signals.
Handles missing data and noise effectively in spectral estimation.
Provides uncertainty quantification in the reconstructed signals.
Abstract
In a number of data-driven applications such as detection of arrhythmia, interferometry or audio compression, observations are acquired indistinctly in the time or frequency domains: temporal observations allow us to study the spectral content of signals (e.g., audio), while frequency-domain observations are used to reconstruct temporal/spatial data (e.g., MRI). Classical approaches for spectral analysis rely either on i) a discretisation of the time and frequency domains, where the fast Fourier transform stands out as the \textit{de facto} off-the-shelf resource, or ii) stringent parametric models with closed-form spectra. However, the general literature fails to cater for missing observations and noise-corrupted data. Our aim is to address the lack of a principled treatment of data acquired indistinctly in the temporal and frequency domains in a way that is robust to missing or noisy…
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