Recovery of Noisy Points on Band-limited Surfaces: Kernel Methods Re-explained
We introduce a continuous domain framework for the recovery of points on a surface in high dimensional space, represented as the zero-level set of a bandlimited function. We show that the exponential maps of the points on the surface satisfy annihilation relations, implying that they lie in a finite...
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Zusammenfassung: | We introduce a continuous domain framework for the recovery of points on a
surface in high dimensional space, represented as the zero-level set of a
bandlimited function. We show that the exponential maps of the points on the
surface satisfy annihilation relations, implying that they lie in a finite
dimensional subspace. The subspace properties are used to derive sampling
conditions, which will guarantee the perfect recovery of the surface from
finite number of points. We rely on nuclear norm minimization to exploit the
low-rank structure of the maps to recover the points from noisy measurements.
Since the direct estimation of the surface is computationally prohibitive in
very high dimensions, we propose an iterative reweighted algorithm using the
"kernel trick". The iterative algorithm reveals deep links to Laplacian based
algorithms widely used in graph signal processing; the theory and the sampling
conditions can serve as a basis for discrete-continuous domain processing of
signals on a graph. |
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DOI: | 10.48550/arxiv.1801.00890 |