Spherical Coordinates from Persistent Cohomology
We describe a method to obtain spherical parameterizations of arbitrary data through the use of persistent cohomology and variational optimization. We begin by computing the second-degree persistent cohomology of the filtered Vietoris-Rips (VR) complex of a data set X. We extract a cocycle α from any significant feature and define an associated map α: VR(X) → S^2. We use this map as an infeasible initialization for a variational optimization problem with a unique minimizer, up to rigid motion. We employ an alternating gradient descent/ Möbius transformation update method to solve the problem and generate a more suitable, i.e., smoother, representative of the homotopy class of α. We show that this process preserves the relevant topological feature of the data and converges to a feasible optimum. Finally, we conduct numerical experiments on both synthetic and real-world data sets to show the efficacy of our proposed approach.
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