Xijie WuHao DingNingbo LiuYunlong DongJian Guan
Under the framework of feature-based detection of small targets on sea surface, existing feature extraction methods only use the echo data of current frame while ignoring the influence of historical echo data. Nevertheless, due to the non-stationarity of sea clutter, it may lead to unstable extraction of detection features, and then affect detection performance. To solve this problem, this paper designs a feature extraction method based on a priori information for small target detection. It firstly obtains a priori information from historical echo data by kernel density estimation (KDE) method. Then, the corresponding feature estimation method is utilized to obtain improved feature according to the relationship between current frame data and a priori information. Finally, the feature information of current frame is integrated into a priori information to prepare next feature extraction. Measured data are utilized to verify the performance of proposed method and the results reveal that, this method can effectively improve detection performance especially when sea clutter and target echo have good separability. In addition, the complexity of algorithm is analyzed to prove that proposed method has certain application potential.
Chengpeng DuanBingliang HuWei LiuTianlei MaQi MaHao Wang
Kaisi GuoTingyao XieKaili QinXi YeFeng Feng
Jian GuanXingyu JiangBaoxin ChenHao DingYunlong DongNingbo Liu