Signal Analysis via the Stochastic Geometry of Spectrogram Level Sets
Subhroshekhar Ghosh, Meixia Lin, Dongfang Sun

TL;DR
This paper introduces a novel approach to signal analysis using the stochastic geometry of spectrogram level sets, providing rigorous theoretical results and an effective algorithm for detection and estimation.
Contribution
It offers the first rigorous statistical framework for spectrogram level set analysis, with provable guarantees and a new algorithm for signal detection and reconstruction.
Findings
Proves the effectiveness of level set based signal detection.
Provides theoretical guarantees on detection thresholds.
Demonstrates the algorithm's success through empirical studies.
Abstract
Spectrograms are fundamental tools in time-frequency analysis, being the squared magnitude of the so-called short time Fourier transform (STFT). Signal analysis via spectrograms has traditionally explored their peaks, i.e. their maxima. This is complemented by a recent interest in their zeros or minima, following seminal work by Flandrin and others, which exploits connections with Gaussian analytic functions (GAFs). However, the zero sets (or extrema) of GAFs have a complicated stochastic structure, complicating any direct theoretical analysis. Standard techniques largely rely on statistical observables from the analysis of spatial data, whose distributional properties for spectrograms are mostly understood only at an empirical level. In this work, we investigate spectrogram analysis via an examination of the stochastic geometric properties of their level sets. We obtain rigorous…
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