Title :
Learning of scanning strategies for electronic support using predictive state representations
Author :
Hadrien Claude;Cyrille Enderli;Jean-François Grandin;Olivier Pietquin
Author_Institution :
Thales Airborne Systems, Elancourt, France
Abstract :
In Electronic Support, a receiver must monitor a wide frequency spectrum in which threatening emitters operate. A common approach is to use sensors with high sensitivity but a narrow bandwidth. To maintain surveillance over the whole spectrum, the sensor has to sweep between frequency bands but requires a scanning strategy. Search strategies are usually designed prior to the mission using an approximate knowledge of illumination patterns. This often results in open-loop policies that cannot take advantage of previous observations. As pointed out in past researches, these strategies lack of robustness to the prior. We propose a new closed loop search strategy that learns a stochastic model of each radar using predictive state representations. The learning algorithm benefits from the recent advances in spectral learning and rank minimization using nuclear norm penalization.
Keywords :
"Radar","History","Lighting","Receivers","Trajectory","Sensors","Time-frequency analysis"
Conference_Titel :
Machine Learning for Signal Processing (MLSP), 2015 IEEE 25th International Workshop on
DOI :
10.1109/MLSP.2015.7324365