Title :
A model-based framework for fast dynamic image sampling
Author :
Dilshan Godaliyadda, G.M. ; Buzzard, Gregery T. ; Bouman, Charles A.
Author_Institution :
Sch. of Electr. & Comput. Eng., Purdue Univ., West Lafayette, IN, USA
Abstract :
In many applications, it is critical to be able to sample the most informative pixels of an image first; and then once these pixels are sampled, the highest fidelity image can be reconstructed. Optimized sampling strategies generally fall into two categories: static and dynamic. In dynamic sampling, each new sample is chosen by using information obtained from previous samples. In this way, dynamic sampling offers the potential of much greater fidelity, but at the cost of greater complexity. Existing methods for dynamic non-uniform sampling of images are based on the intuition that sampling rates should be greatest in locations of greatest variation, but recent developments in the theory of optimal experimental design offer a theoretical framework for optimal sampling based on the use of a formal Bayesian prior model. In this paper, we introduce a fast dynamic image sampling framework based on Bayesian experimental design (BED). The method, which we call model-based dynamic sampling (MBDS) allows for the use of a general prior distribution for the image, and it incorporates a pixel-wise sampling constraint in the BED framework. The MBDS works by first generating L stochastic samples (i.e., images) from the posterior distribution given the current measurements, and then selecting the pixel with the greatest posterior variance. We also introduce a computationally efficient method for computing the stochastic samples through a local updating technique.
Keywords :
belief networks; image sampling; statistical distributions; BED framework; Bayesian experimental design; L stochastic samples; MBDS; dynamic non-uniform image sampling; fast dynamic image sampling; formal Bayesian prior model; general prior distribution; model-based dynamic sampling; model-based framework; optimal sampling; pixel-wise sampling constraint; posterior distribution; Bayes methods; Computed tomography; Equations; Image reconstruction; Mathematical model; Stochastic processes; Vectors;
Conference_Titel :
Acoustics, Speech and Signal Processing (ICASSP), 2014 IEEE International Conference on
Conference_Location :
Florence
DOI :
10.1109/ICASSP.2014.6853913