On uniqueness and ill-posedness for the deautoconvolution problem in the multi-dimensional case

12/13/2022
by   Bernd Hofmann, et al.
0

This paper analyzes the inverse problem of deautoconvolution in the multi-dimensional case with respect to solution uniqueness and ill-posedness. Deautoconvolution means here the reconstruction of a real-valued L^2-function with support in the n-dimensional unit cube [0,1]^n from observations of its autoconvolution either in the full data case (i.e. on [0,2]^n) or in the limited data case (i.e. on [0,1]^n). Based on multi-dimensional variants of the Titchmarsh convolution theorem due to Lions and Mikusiński, we prove in the full data case a twofoldness assertion, and in the limited data case uniqueness of non-negative solutions for which the origin belongs to the support. The latter assumption is also shown to be necessary for any uniqueness statement in the limited data case. A glimpse of rate results for regularized solutions completes the paper.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset

Sign in with Google

×

Use your Google Account to sign in to DeepAI

×

Consider DeepAI Pro