Functions with bounded Hessian-Schatten variation: density, variational and extremality properties

Autor: Ambrosio, Luigi, Brena, Camillo, Conti, Sergio
Rok vydání: 2023
Předmět:
Druh dokumentu: Working Paper
Popis: In this paper we analyze in detail a few questions related to the theory of functions with bounded $p$-Hessian-Schatten total variation, which are relevant in connection with the theory of inverse problems and machine learning. We prove an optimal density result, relative to the $p$-Hessian-Schatten total variation, of continuous piecewise linear (CPWL) functions in any space dimension $d$, using a construction based on a mesh whose local orientation is adapted to the function to be approximated. We show that not all extremal functions with respect to the $p$-Hessian-Schatten total variation are CPWL. Finally, we prove existence of minimizers of certain relevant functionals involving the $p$-Hessian-Schatten total variation in the critical dimension $d=2$.
Databáze: arXiv