Title :
A Stochastic Continuation Approach to Piecewise Constant Reconstruction
Author :
Robini, Marc C. ; Lachal, Aimé ; Magnin, Isabelle E.
Author_Institution :
CNRS Res. Unit, Villeurbanne
Abstract :
We address the problem of reconstructing a piecewise constant 3-D object from a few noisy 2-D line-integral projections. More generally, the theory developed here readily applies to the recovery of an ideal n-D signal (n ges 1) from indirect measurements corrupted by noise. Stabilization of this ill-conditioned inverse problem is achieved with the Potts prior model, which leads to a challenging optimization task. To overcome this difficulty, we introduce a new class of hybrid algorithms that combines simulated annealing with deterministic continuation. We call this class of algorithms stochastic continuation (SC). We first prove that, under mild assumptions, SC inherits the finite-time convergence properties of generalized simulated annealing. Then, we show that SC can be successfully applied to our reconstruction problem. In addition, we look into the concave distortion acceleration method introduced for standard simulated annealing and we derive an explicit formula for choosing the free parameter of the cost function. Numerical experiments using both synthetic data and real radiographic testing data show that SC outperforms standard simulated annealing.
Keywords :
convergence; image reconstruction; inverse problems; piecewise constant techniques; simulated annealing; stochastic processes; Potts prior model; concave distortion acceleration; deterministic continuation; finite-time convergence properties; generalized simulated annealing; ill-conditioned inverse problem; indirect measurements; noisy 2D line-integral projection; optimization; piecewise constant 3D object; piecewise constant reconstruction; stochastic continuation approach; Acceleration; Convergence; Cost function; Inverse problems; Noise measurement; Radiography; Simulated annealing; Stochastic processes; Stochastic resonance; Testing; Continuation methods; inverse problems; signal reconstruction; simulated annealing; Algorithms; Artificial Intelligence; Data Interpretation, Statistical; Image Enhancement; Image Interpretation, Computer-Assisted; Models, Statistical; Reproducibility of Results; Sensitivity and Specificity; Stochastic Processes;
Journal_Title :
Image Processing, IEEE Transactions on
DOI :
10.1109/TIP.2007.904975