Abstract : This report focuses on the development of an automatic target recognition (ATR) system using high resolution synthetic aperture radar (SAR) imagery. The system achieves 95 to 100 percent recognition rates when applied to a set of MSTAR images. Typically, the system takes less than one minute to match an input image to a candidate vehicle class with Matlab programs running on a Pentium II 300 MHz machine. Experiments based on conventional recognition techniques were conducted for comparisons. Study of persistent scattering confirms the feasibility of implementing a SAR ATR system using physical image features. A new generic vehicle model, parameterized by the length, width, and orientation of a target is used in a two-phase recognition process with hypothesis generation and verification aimed at addressing the combinatorial target recognition problem. In the hypothesis generation stage, a few likely candidate target classes are identified from a target database with positive evidence. The candidates are assessed using both positive and negative evidence in the hypothesis verification stage. Leading surface estimation, image alignment, Delaunay walk, and recognition metrics are introduced to improve performance of the SAR ATR system.
[1]
Taku Yamazaki,et al.
Invariant histograms and deformable template matching for SAR target recognition
,
1996,
Proceedings CVPR IEEE Computer Society Conference on Computer Vision and Pattern Recognition.
[2]
Gerald R. Benitz,et al.
ATR performance using enhanced resolution SAR
,
1996,
Defense, Security, and Sensing.
[3]
C. L. Winter,et al.
Bayesian inference-based fusion of radar imagery, military forces and tactical terrain models in the image exploitation system/balanced technology initiative
,
1995,
Int. J. Hum. Comput. Stud..
[4]
Jacques Verly,et al.
Use of persistent scatterers for model-based recognition
,
1994,
Defense, Security, and Sensing.
[5]
Gabriel Thomas,et al.
Application of one-dimensional adaptive extrapolation to improve resolution in range-Doppler imaging
,
1994,
Defense, Security, and Sensing.
[6]
Gerald R. Benitz.
Adaptive high-definition imaging
,
1994,
Defense, Security, and Sensing.