Fast Detection of Small Targets in High-Resolution Maritime Radars by Feature Normalization and Fusion

被引:11
作者
Guo, Zi-Xun [1 ]
Bai, Xiao-Hui [1 ]
Li, Jing-Yi [1 ]
Shui, Peng-Lang [1 ]
机构
[1] Xidian Univ, Natl Lab Radar Signal Proc, Xian 710071, Peoples R China
基金
中国国家自然科学基金;
关键词
Detectors; Feature extraction; Training; Clutter; Radar; Radar detection; Databases; Fast feature-fusion-based detector; normalized feature space; sea clutter; small targets on the sea; FLOATING SMALL TARGETS; SEA CLUTTER;
D O I
10.1109/JOE.2021.3133553
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
Joint exploitation of multiple features is a recognized way to implement the effective detection of small targets on the sea in high-resolution maritime radars at the dwelling mode. The tri-feature-based and feature-compression-based detectors use the time-consuming convex hull learning and decision. In this article, a fast feature-fusion-based detector using seven salient features is proposed, where the convex hull learning and decision are replaced by simple threshold determination and decision. It is found that the seven features of sea clutter can be modeled well by the Burr type XII and t-distributions. From the fitted distribution, each feature is normalized to approximate the standard Gaussian distribution by a nonlinear transformation. In the seven-dimensional normalized feature space, an analytical method is given to calculate the optimal weights of feature fusion by the maximization of the interclass distance of the two-class samples. Owing to the normalization of the seven features, the feature fusion loss is significantly reduced comparing with the direct fusion of seven features. The fast feature-fusion-based detector was evaluated on the open and recognized radar databases and offshore experimental data using an unmanned aerial vehicle with a corner reflector. The results show that the fast detector attains competitive performance with the existing best feature-based detector.
引用
收藏
页码:736 / 750
页数:15
相关论文
共 41 条
[1]   A CHARACTERIZATION OF THE BURR TYPE-XII DISTRIBUTION [J].
ALHUSSAINI, EK .
APPLIED MATHEMATICS LETTERS, 1991, 4 (01) :59-61
[2]   Maximum likelihood estimation for compound-Gaussian clutter with inverse gamma texture [J].
Balleri, Allessio ;
Nehorai, Arye ;
Wang, Jian .
IEEE TRANSACTIONS ON AEROSPACE AND ELECTRONIC SYSTEMS, 2007, 43 (02) :775-780
[3]   Statistical Analysis of a High-Resolution Sea-Clutter Database [J].
Carretero-Moya, Javier ;
Gismero-Menoyo, Javier ;
Blanco-del-Campo, Alvaro ;
Asensio-Lopez, Alberto .
IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2010, 48 (04) :2024-2037
[4]  
Carta P, 2015, EUR MICROW CONF, P1463, DOI 10.1109/EuMC.2015.7346050
[5]  
Cognitive Systems Laboratory McMaster Univ. Canada., IPIX RAD DAT OL
[6]   NEAREST NEIGHBOR PATTERN CLASSIFICATION [J].
COVER, TM ;
HART, PE .
IEEE TRANSACTIONS ON INFORMATION THEORY, 1967, 13 (01) :21-+
[7]   A time-domain procedure for non-Gaussian stationary environmental testing using zero-memory nonlinear transformation [J].
Cui, Song ;
Zheng, Enlai ;
Kang, Min .
JOURNAL OF VIBRATION AND CONTROL, 2020, 26 (15-16) :1197-1213
[8]  
Devroye L., 1986, NONUNIFORM RANDOM VA
[9]   Weak Target Detection Based on Joint Fractal Characteristics of Autoregressive Spectrum in Sea Clutter Background [J].
Fan, Yifei ;
Tao, Mingliang ;
Su, Jia ;
Wang, Ling .
IEEE GEOSCIENCE AND REMOTE SENSING LETTERS, 2019, 16 (12) :1824-1828
[10]   A Novel Template Reduction Approach for the K-Nearest Neighbor Method [J].
Fayed, Hatem A. ;
Atiya, Amir F. .
IEEE TRANSACTIONS ON NEURAL NETWORKS, 2009, 20 (05) :890-896