DocumentCode :
359140
Title :
Background clutter rejection using generalized regression neural networks
Author :
Waters, Charles Ralph ; Sommese, Tony ; Hibbeln, Brian
Author_Institution :
Photon Res. Assoc. Inc., Port Jefferson, NY, USA
Volume :
3
fYear :
2000
fDate :
2000
Firstpage :
271
Abstract :
Advances in focal plane array technology has led to the development of “staring” sensors for a number of remote sensing application. Here the sensor line-of-sight (LOS) is fixed to a background point and stares at that point while radiometric measurements are collected. Inadvertent motions of the LOS result in unwanted time signals (clutter) that corrupt the measurements. This paper develops a technique that estimates these signals in the output of each focal plane detector by employing a Generalized Regression Neural Network (GRNN). The GRNN is an optimal estimator that is based on the well-known statistical concept of conditional probability. Two implementations are evaluated for removing the background. The first technique estimates the clutter signal in each detectors output based on the previous measurements from that detector. The second method trains the GRNN with the measurements from the surrounding spatial pixels on the current data frame. Both techniques were evaluated using measurement sets from an existing staring space sensor. The results show the GRNN estimates and follows the clutter signal very well with a rms error <3% which is within the variation of the random sensor noise
Keywords :
clutter; focal planes; learning (artificial intelligence); neural nets; probability; radiometry; remote sensing; sensor fusion; space vehicle electronics; GRNN; Generalized Regression Neural Network; background clutter rejection; clutter; clutter signal; conditional probability; focal plane array; generalized regression neural networks; optimal estimator; radiometric measurement; random sensor noise; remote sensing; spatial pixels; staring space sensors; statistical concept; unwanted time signals; Current measurement; Detectors; Extraterrestrial measurements; Neural networks; Probability; Radiometry; Remote sensing; Sensor arrays; Signal detection; Time measurement;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Aerospace Conference Proceedings, 2000 IEEE
Conference_Location :
Big Sky, MT
ISSN :
1095-323X
Print_ISBN :
0-7803-5846-5
Type :
conf
DOI :
10.1109/AERO.2000.879855
Filename :
879855
Link To Document :
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