
Experimental infrared point-source detection using an iterative generalized likelihood ratio test algorithm
Author(s) -
Jonathan M. Nichols,
J Waterman
Publication year - 2017
Publication title -
applied optics
Language(s) - English
Resource type - Journals
ISSN - 0003-6935
DOI - 10.1364/ao.56.001872
Subject(s) - likelihood ratio test , algorithm , detector , covariance matrix , estimator , covariance , computer science , expectation–maximization algorithm , maximum likelihood , mathematics , statistics , optics , physics
This work documents the performance of a recently proposed generalized likelihood ratio test (GLRT) algorithm in detecting thermal point-source targets against a sky background. A calibrated source is placed above the horizon at various ranges and then imaged using a mid-wave infrared camera. The proposed algorithm combines a so-called "shrinkage" estimator of the background covariance matrix and an iterative maximum likelihood estimator of the point-source parameters to produce the GLRT statistic. It is clearly shown that the proposed approach results in better detection performance than either standard energy detection or previous implementations of the GLRT detector.