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    The embedding dimension of Laplacian eigenfunction maps

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    Any closed, connected Riemannian manifold MM can be smoothly embedded by its Laplacian eigenfunction maps into Rm\mathbb{R}^m for some mm. We call the smallest such mm the maximal embedding dimension of MM. We show that the maximal embedding dimension of MM is bounded from above by a constant depending only on the dimension of MM, a lower bound for injectivity radius, a lower bound for Ricci curvature, and a volume bound. We interpret this result for the case of surfaces isometrically immersed in R3\mathbb{R}^3, showing that the maximal embedding dimension only depends on bounds for the Gaussian curvature, mean curvature, and surface area. Furthermore, we consider the relevance of these results for shape registration.Comment: 16 pages, 2 figures, 3 theorems, and a torus in a pear tre
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