Towards optimal sensor placement for inverse problems in spaces of measures

Phuoc Truong Huynh, Konstantin Pieper, Daniel Walter

Research output: Contribution to journalArticlepeer-review

Abstract

The objective of this work is to quantify the reconstruction error in sparse inverse problems with measures and stochastic noise, motivated by optimal sensor placement. To be useful in this context, the error quantities must be explicit in the sensor configuration and robust with respect to the source, yet relatively easy to compute in practice, compared to a direct evaluation of the error by a large number of samples. In particular, we consider the identification of a measure consisting of an unknown linear combination of point sources from a finite number of measurements contaminated by Gaussian noise. The statistical framework for recovery relies on two main ingredients: first, a convex but non-smooth variational Tikhonov point estimator over the space of Radon measures and, second, a suitable mean-squared error based on its Hellinger-Kantorovich distance to the ground truth. To quantify the error, we employ a non-degenerate source condition as well as careful linearization arguments to derive a computable upper bound. This leads to asymptotically sharp error estimates in expectation that are explicit in the sensor configuration. Thus they can be used to estimate the expected reconstruction error for a given sensor configuration and guide the placement of sensors in sparse inverse problems.

Original languageEnglish
Article number055007
JournalInverse Problems
Volume40
Issue number5
DOIs
StatePublished - May 2024

Keywords

  • Radon measures
  • frequentistic-inference
  • inverse problems
  • off-the-grid sparse recovery
  • optimal sensor placement

Fingerprint

Dive into the research topics of 'Towards optimal sensor placement for inverse problems in spaces of measures'. Together they form a unique fingerprint.

Cite this