This work considers Bayesian experimental design for the inverse boundary value problem of linear elasticity in a two-dimensional setting. The aim is to optimize the positions of compactly supported pressure activations on the boundary of the examined body in order to maximize the value of the resulting boundary deformations as data for the inverse problem of reconstructing the Lam\'e parameters inside the object. We resort to a linearized measurement model and adopt the framework of Bayesian experimental design, under the assumption that the prior and measurement noise distributions are mutually independent Gaussians. This enables the use of the standard Bayesian A-optimality criterion for deducing optimal positions for the pressure activa...
We present a method for calculating a Bayesian uncertainty estimate on the recovered material parame...
Bayesian optimal design is considered for experiments where it is hypothesised that the responses ar...
This thesis progresses Bayesian experimental design by developing novel methodologies and extensions...
We present a statistical method for recovering the material parameters of a heterogeneous hyperelast...
The non-invasive differential diagnosis of breast masses through ultrasound imaging motivates the fo...
We consider optimal experimental design (OED) for Bayesian nonlinear inverse problems governed by pa...
Abstract. We present an efficient method for computing A-optimal experimental designs for infinite-d...
S U M M A R Y When designing an experiment, the aim is usually to find the design which minimizes ex...
We consider the problem of recovering the material parameters of a hyperelastic material [1] in the ...
In many areas of science, models are used to describe attributes of complex systems. These models ar...
Bayesian optimal experimental design (BOED)—including active learning, Bayesian optimization, and se...
Optimal experimental design (OED) is the general formalism of sensor placement and decisions about t...
The design of an experiment can be always be considered at least implicitly Bayesian, with prior kno...
Optimizing an experimental design is a complex task when a model is required for indirect reconstru...
Funding Information: The work of the first author was supported by the the Academy of Finland throug...
We present a method for calculating a Bayesian uncertainty estimate on the recovered material parame...
Bayesian optimal design is considered for experiments where it is hypothesised that the responses ar...
This thesis progresses Bayesian experimental design by developing novel methodologies and extensions...
We present a statistical method for recovering the material parameters of a heterogeneous hyperelast...
The non-invasive differential diagnosis of breast masses through ultrasound imaging motivates the fo...
We consider optimal experimental design (OED) for Bayesian nonlinear inverse problems governed by pa...
Abstract. We present an efficient method for computing A-optimal experimental designs for infinite-d...
S U M M A R Y When designing an experiment, the aim is usually to find the design which minimizes ex...
We consider the problem of recovering the material parameters of a hyperelastic material [1] in the ...
In many areas of science, models are used to describe attributes of complex systems. These models ar...
Bayesian optimal experimental design (BOED)—including active learning, Bayesian optimization, and se...
Optimal experimental design (OED) is the general formalism of sensor placement and decisions about t...
The design of an experiment can be always be considered at least implicitly Bayesian, with prior kno...
Optimizing an experimental design is a complex task when a model is required for indirect reconstru...
Funding Information: The work of the first author was supported by the the Academy of Finland throug...
We present a method for calculating a Bayesian uncertainty estimate on the recovered material parame...
Bayesian optimal design is considered for experiments where it is hypothesised that the responses ar...
This thesis progresses Bayesian experimental design by developing novel methodologies and extensions...