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Near Optimal Reconstruction of Spherical Harmonic Expansions

25 February 2022
A. Zandieh
Insu Han
H. Avron
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Abstract

We propose an algorithm for robust recovery of the spherical harmonic expansion of functions defined on the d-dimensional unit sphere Sd−1\mathbb{S}^{d-1}Sd−1 using a near-optimal number of function evaluations. We show that for any f∈L2(Sd−1)f \in L^2(\mathbb{S}^{d-1})f∈L2(Sd−1), the number of evaluations of fff needed to recover its degree-qqq spherical harmonic expansion equals the dimension of the space of spherical harmonics of degree at most qqq up to a logarithmic factor. Moreover, we develop a simple yet efficient algorithm to recover degree-qqq expansion of fff by only evaluating the function on uniformly sampled points on Sd−1\mathbb{S}^{d-1}Sd−1. Our algorithm is based on the connections between spherical harmonics and Gegenbauer polynomials and leverage score sampling methods. Unlike the prior results on fast spherical harmonic transform, our proposed algorithm works efficiently using a nearly optimal number of samples in any dimension d. We further illustrate the empirical performance of our algorithm on numerical examples.

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