Flow-Aware Ellipsoidal Filtration for Persistent Homology of Recurrent Signals
Omer Bahadir Eryilmaz, Cihan Katar, Max A. Little

TL;DR
This paper introduces a flow-aware ellipsoidal filtration method for persistent homology that leverages local flow geometry to improve analysis of recurrent signals, enhancing denoising and recurrence detection.
Contribution
The work presents a novel anisotropic filtration based on local flow covariance, outperforming traditional isotropic methods like Vietoris--Rips in dynamical systems analysis.
Findings
Improved topology-preserving denoising using flow-aware neighborhoods
Enhanced first-recurrence-time estimation with the new method
Flow-aware ellipsoids better capture recurrent loop structures
Abstract
Recurrent signals give rise to trajectories that repeatedly return close to earlier states in state space. Many analysis methods therefore require a principled notion of similarity between states. In practice, a recurrence threshold sets the scale of the neighbourhood used to define when two states are considered close. Close returns can also support topology-preserving denoising in state space, aiming to reduce noise while preserving the trajectory's structure, which classical denoising methods may distort. The effectiveness of both denoising and recurrence analysis therefore depends critically on how these neighbourhoods are modelled and scaled. This work introduces a flow-aware ellipsoidal filtration for persistent homology based on a spatio--temporal covariance construction that estimates local flow geometry from both temporal and spatial neighbours. Unlike isotropic constructions…
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