Title :
Probability distribution mixture model for detection of targets in high-resolution SAR images
Author :
Porgès, Tristan ; Delabbaye, Jean-Yves ; Enderli, Cyrille ; Favier, Gérard
Author_Institution :
Lab. I3S, UNSA/CNRS, Sophia-Antipolis, France
Abstract :
In this paper, the detection of close targets in heterogeneous clutter in high-resolution SAR images is investigated. We adopt a probability distribution mixture model where each pixel intensity image is characterised by two probability density functions: one related to the targets and one related to the background clutter. A specific detection threshold, based on the estimates of the mixture parameters, is used. The statistical characterisation of SAR images modeling is a key issue for detection. The clutter is modelled using the K distribution that is a flexible tool over non-homogenous areas. We show that our method is able to detect close targets at constant false alarm ratio without making any assumptions about their size and their spatial configuration.
Keywords :
image resolution; object detection; radar imaging; statistical analysis; synthetic aperture radar; K distribution; SAR image resolution; probability distribution mixture model; statistical characterisation; target detection; Detection algorithms; Detectors; Object detection; Parameter estimation; Pixel; Probability density function; Probability distribution; Statistical analysis; Target recognition; Testing; Automatic Target Detection; CFAR; K distribution; SAR Images; Statistical mixture;
Conference_Titel :
Radar Conference - Surveillance for a Safer World, 2009. RADAR. International
Conference_Location :
Bordeaux
Print_ISBN :
978-2-912328-55-7