Title :
Non-parametric Bayesian super-resolution
Author_Institution :
Malvern Technol. Centre, QinetiQ, Malvern, UK
fDate :
8/1/2010 12:00:00 AM
Abstract :
Super-resolution of signals and images can improve the automatic detection and recognition of objects of interest. However, the uncertainty associated with this process is not often taken into consideration. This is important because the processing of noisy signals can result in spurious estimates of the scene content. This study reviews a variety of super-resolution techniques and presents two non-parametric Bayesian super-resolution algorithms that not only take uncertainty into account, but also retain knowledge about the output uncertainty in the form of a full probability distribution. One of the two Bayesian techniques is based on an analytical calculation re-interpreted as super-resolution, and the other is a novel numerical algorithm. Although the algorithms are presented as stand-alone techniques for image analysis, such Bayesian super-resolution algorithms can increase automatic target recognition performance over standard super-resolution.
Keywords :
image resolution; numerical analysis; object detection; object recognition; probability; automatic object detection; automatic object recognition; image analysis; image superresolution; nonparametric Bayesian superresolution; numerical algorithm; probability distribution; signal superresolution;
Journal_Title :
Radar, Sonar & Navigation, IET
DOI :
10.1049/iet-rsn.2009.0094