Title :
GMM-based target classification for ground surveillance Doppler radar
Author :
Bilik, Igal ; Tabrikian, Joseph ; Cohen, Arnon
Author_Institution :
Dept. of Electr. & Comput. Eng., Negev Ben-Gurion Univ., Israel
Abstract :
An automatic target recognition (ATR) algorithm, based on greedy learning of Gaussian mixture model (GMM) is developed. The GMMs were obtained for a wide range of ground surveillance radar targets such as walking person(s), tracked or wheeled vehicles, animals, and clutter. Maximum-likelihood (ML) and majority-voting decision schemes were applied to these models for target classification. The corresponding classifiers were trained and tested using distinct databases of target echoes, recorded by ground surveillance radar. ML and majority-voting classifiers obtained classification rates of 88% and 96%, correspondingly. Both classifiers outperform trained human operators.
Keywords :
Doppler radar; Gaussian processes; greedy algorithms; maximum likelihood detection; object recognition; radar detection; radar target recognition; surveillance; target tracking; Doppler radar; Gaussian mixture model; automatic target recognition algorithm; greedy learning; ground surveillance radar targets; majority-voting decision schemes; maximum-likelihood schemes; target classification; target echoes; Animals; Doppler radar; Land vehicles; Legged locomotion; Radar clutter; Radar tracking; Road vehicles; Surveillance; Target recognition; Target tracking;
Journal_Title :
Aerospace and Electronic Systems, IEEE Transactions on
DOI :
10.1109/TAES.2006.1603422