提出了一种基于雷达高分辨距离像(high resolution range profile,HRRP)求解进动锥体目标微动参数与几何外形参数的新方法。首先通过对目标的电磁散射机理分析,建立了进动锥体HRRP径向长度的精确数学模型,得到了距离像长度与雷达观测角...提出了一种基于雷达高分辨距离像(high resolution range profile,HRRP)求解进动锥体目标微动参数与几何外形参数的新方法。首先通过对目标的电磁散射机理分析,建立了进动锥体HRRP径向长度的精确数学模型,得到了距离像长度与雷达观测角、进动角和目标特征尺寸之间的数学关系;然后在此基础上,推导了在变视角观测条件下利用HRRP长度求解锥体进动角的精确表达式;最后解算出锥体目标的高度、底面半径和推算雷达观测角等参数。仿真结果验证了本方法的正确性和有效性。展开更多
With the improvement of radar resolution,the dimension of the high resolution range profile(HRRP)has increased.In order to solve the small sample problem caused by the increase of HRRP dimension,an algorithm based on ...With the improvement of radar resolution,the dimension of the high resolution range profile(HRRP)has increased.In order to solve the small sample problem caused by the increase of HRRP dimension,an algorithm based on kernel joint discriminant analysis(KJDA)is proposed.Compared with the traditional feature extraction methods,KJDA possesses stronger discriminative ability in the kernel feature space.K-nearest neighbor(KNN)and kernel support vector machine(KSVM)are applied as feature classifiers to verify the classification effect.Experimental results on the measured aircraft datasets show that KJDA can reduce the dimensionality,and improve target recognition performance.展开更多
Automatic target recognition (ATR) is an important function for modern radar. High resolution range profile (HRRP) of target contains target struc- ture signatures, such as target size, scatterer distribu- tion, e...Automatic target recognition (ATR) is an important function for modern radar. High resolution range profile (HRRP) of target contains target struc- ture signatures, such as target size, scatterer distribu- tion, etc, which is a promising signature for ATR. Sta- tistical modeling of target HRRPs is the key stage for HRRP statistical recognition, including model selection and parameter estimation. For statistical recognition al- gorithms, it is generally assumed that the test samples follow the same distribution model as that of the train- ing data. Since the signal-to-noise ratio (SNR) of the received HRRP is a function of target distance, the as- sumption may be not met in practice. In this paper, we present a robust method for HRRP statistical recogni- tion when SNR of test HRRP is lower than that of train- ing samples. The noise is assumed independent Gaus- sian distributed, while HRRP is modeled by probabilistic principal component analysis (PPCA) model. Simulated experiments based on measured data show the effective- ness of the proposed method.展开更多
文摘提出了一种基于雷达高分辨距离像(high resolution range profile,HRRP)求解进动锥体目标微动参数与几何外形参数的新方法。首先通过对目标的电磁散射机理分析,建立了进动锥体HRRP径向长度的精确数学模型,得到了距离像长度与雷达观测角、进动角和目标特征尺寸之间的数学关系;然后在此基础上,推导了在变视角观测条件下利用HRRP长度求解锥体进动角的精确表达式;最后解算出锥体目标的高度、底面半径和推算雷达观测角等参数。仿真结果验证了本方法的正确性和有效性。
基金supported by the National Natural Science Foundation of China(61471191)the Aeronautical Science Foundation of China(20152052026)the Foundation of Graduate Innovation Center in NUAA(kfjj20170313)
文摘With the improvement of radar resolution,the dimension of the high resolution range profile(HRRP)has increased.In order to solve the small sample problem caused by the increase of HRRP dimension,an algorithm based on kernel joint discriminant analysis(KJDA)is proposed.Compared with the traditional feature extraction methods,KJDA possesses stronger discriminative ability in the kernel feature space.K-nearest neighbor(KNN)and kernel support vector machine(KSVM)are applied as feature classifiers to verify the classification effect.Experimental results on the measured aircraft datasets show that KJDA can reduce the dimensionality,and improve target recognition performance.
文摘Automatic target recognition (ATR) is an important function for modern radar. High resolution range profile (HRRP) of target contains target struc- ture signatures, such as target size, scatterer distribu- tion, etc, which is a promising signature for ATR. Sta- tistical modeling of target HRRPs is the key stage for HRRP statistical recognition, including model selection and parameter estimation. For statistical recognition al- gorithms, it is generally assumed that the test samples follow the same distribution model as that of the train- ing data. Since the signal-to-noise ratio (SNR) of the received HRRP is a function of target distance, the as- sumption may be not met in practice. In this paper, we present a robust method for HRRP statistical recogni- tion when SNR of test HRRP is lower than that of train- ing samples. The noise is assumed independent Gaus- sian distributed, while HRRP is modeled by probabilistic principal component analysis (PPCA) model. Simulated experiments based on measured data show the effective- ness of the proposed method.