Radar high-resolution range profile (HRRP) has received intensive attention from the radar automatic target recognition (RATR) community. Usually, since the initial phase of a complex HRRP is strongly sensitive to target position variation, which is referred to as the initial phase sensitivity in this paper, only the amplitude information in the complex HRRP, called the real HRRP in this paper, is used for RATR, whereas the phase information is discarded. However, the remaining phase information except for initial phases in the complex HRRP also contains valuable target discriminant information. This paper proposes a novel feature extraction method for the complex HRRP. The extracted complex feature vector, referred to as the complex feature vector with difference phases, contains the difference phase information between range cells but no initial phase information in the complex HRRP. According to the scattering center model, the physical mechanism of the proposed complex feature vector is similar to that of the real HRRP, except for reserving some phase information independent of the initial phase in the complex HRRP. The recognition algorithms, frame-template establishment methods and preprocessing methods used in the real HRRP-based RATR can also be applied to the proposed complex feature vector-based RATR. Moreover, the components in the complex feature vector with difference phases approximate to follow Gaussian distribution, which make it simple to perform the statistical recognition by such complex feature vector. The recognition experiments based on measured data show that the proposed complex feature vector can obtain better recognition performance than the real HRRP if only the cell interval parameters are properly selected.
[1]
Zheng Bao,et al.
Radar automatic target recognition using complex high-resolution range profiles
,
2007
.
[2]
Jian Yang,et al.
A new approach to dual-band polarimetric radar remote sensing image classification
,
2007,
Science in China Series F: Information Sciences.
[3]
Andrew R. Webb,et al.
Bayesian gamma mixture model approach to radar target recognition
,
2003
.
[4]
Lawrence Carin,et al.
Identification of ground targets from sequential high-range-resolution radar signatures
,
2002
.
[5]
Hyo-Tae Kim,et al.
Efficient radar target recognition using the MUSIC algorithm and invariant features
,
2002
.
[6]
Robert L. Williams,et al.
Automatic target recognition of time critical moving targets using 1D high range resolution (HRR) radar
,
1999
.
[7]
Joseph A. O'Sullivan,et al.
Automatic target recognition using high-resolution radar range-profiles
,
1997
.
[8]
Mengdao Xing,et al.
Radar HRRP target recognition based on higher order spectra
,
2005,
IEEE Transactions on Signal Processing.
[9]
Zheng Bao,et al.
A two-distribution compounded statistical model for Radar HRRP target recognition
,
2006,
IEEE Trans. Signal Process..
[10]
Zheng Bao,et al.
Radar HRR Profiles Recognition Based on SVM with Power-Transformed-Correlation Kernel
,
2004,
ISNN.
[11]
Frans C. A. Groen,et al.
The box-cox metric for nearest neighbour classification improvement
,
1997,
Pattern Recognit..
[12]
Wenyin Liu,et al.
Advances in Web-Based Learning – ICWL 2004
,
2004,
Lecture Notes in Computer Science.