Linear inverse problems with Hessian–Schatten total variation

Mathematics - Functional Analysis Equations Regularization Systems FOS: Mathematics Space Reconstruction Networks 0101 mathematics 01 natural sciences Functional Analysis (math.FA)
DOI: 10.1007/s00526-023-02611-6 Publication Date: 2023-11-20T09:02:31Z
ABSTRACT
AbstractIn this paper, we characterize the class of extremal points of the unit ball of the Hessian–Schatten total variation (HTV) functional. The underlying motivation for our work stems from a general representer theorem that characterizes the solution set of regularized linear inverse problems in terms of the extremal points of the regularization ball. Our analysis is mainly based on studying the class of continuous and piecewise linear (CPWL) functions. In particular, we show that in dimension$$d=2$$d=2, CPWL functions are dense in the unit ball of the HTV functional. Moreover, we prove that a CPWL function is extremal if and only if its Hessian is minimally supported. For the converse, we prove that the density result (which we have only proven for dimension$$d=2$$d=2) implies that the closure of the CPWL extreme points contains all extremal points.
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