The mechanical dynamics in addition to its bulk translation of the target or any structure on the target is called micro-motion, which yields new features in the target's signature that are distinct from its signature in the absence of micro-motion. Micro-motion evokes a frequency modulation in radar echo known as micro-Doppler (m-D) effect which may help to detect specific intrinsic structures of the target, leading a potential method to perform target discrimination and identification by extracting micro-Doppler features. At present, it has drawn a lot of attention to extract the micro-motion target's m-D information for target classification and identification. The various m-D classification approaches require first the extraction of salient features from the radar signal. The micro-Doppler usually manifests curves characteristic in the time-frequency (T-F) domain. Thus the features are calculated from the joint T-F domain. Most of these techniques treat the spectrogram in T-F domain as an image, and obtain features through some image processing techniques. In this paper, we investigated statistical classification and recognition methods for target classification using their micro-Doppler signatures. In our work, micro-Doppler signatures for targets represented by point scattering model with four different micro-motions (Vibration, Coning, Spinning, and Precession) are studied. We propose use of principle component analysis (PCA) and 2-D PCA as the data driven feature extraction approaches that captures vital statistics of the input at a reduced dimension. Simulation analysis by using the simulated data is performed to confirm the effectiveness of the proposal. Experiment results show that with the proposed methods, perfect classification of four different motions can be attained when training and testing set has data from different targets.
[1]
Renbiao Wu,et al.
Two-dimensional PCA for SAR automatic target recognition
,
2007,
2007 1st Asian and Pacific Conference on Synthetic Aperture Radar.
[2]
Li Xiang.
The Achievements of Target Characteristic with Micro-Motion
,
2007
.
[3]
Bernard Mulgrew,et al.
Radar Signal Classification Using Pca-Based Features
,
2006,
2006 IEEE International Conference on Acoustics Speech and Signal Processing Proceedings.
[4]
Carmine Clemente,et al.
Vibrating Target Micro-Doppler Signature in Bistatic SAR With a Fixed Receiver
,
2012,
IEEE Transactions on Geoscience and Remote Sensing.
[5]
Chao Lu,et al.
Target Classification and Pattern Recognition Using Micro-Doppler Radar Signatures
,
2006,
Seventh ACIS International Conference on Software Engineering, Artificial Intelligence, Networking, and Parallel/Distributed Computing (SNPD'06).
[6]
H. Wechsler,et al.
Micro-Doppler effect in radar: phenomenon, model, and simulation study
,
2006,
IEEE Transactions on Aerospace and Electronic Systems.
[7]
Victor C. Chen,et al.
Analysis of radar micro-Doppler with time-frequency transform
,
2000,
Proceedings of the Tenth IEEE Workshop on Statistical Signal and Array Processing (Cat. No.00TH8496).
[8]
Jiajin Lei,et al.
Target classification based on micro-Doppler signatures
,
2005,
IEEE International Radar Conference, 2005..