Classification of Buried Targets Using Ground Penetrating Radar: Comparison Between Genetic Programming and Neural Networks

The detection and classification of buried targets such as unexploded ordnance (UXO) using ground penetrating radar (GPR) technology involves complex qualitative features and 2-D scattering images. These processes are often performed by human operators and are thus subject to error and bias. Artificial intelligence (AI) technologies, such as neural networks (NN) and fuzzy systems, have been applied to develop autonomous classification algorithms and have shown promising results. Genetic programming (GP), a relatively new AI method, has also been examined for these classification purposes. In this letter, the results of a comparison between the classification performances of NN versus the GP techniques for GPR UXO data are presented. Simulated 2-D scattering patterns from one UXO target and four non-UXO objects are used in this comparison. Different levels of noise and cases of untrained data are also examined. Obtained results show that GP provides better performance than NN methods with increasing problem difficulty. Genetic programming also showed robustness to untrained data as well as an inherent capability of providing global optimal searching, which could minimize efforts on training processes.

[1]  Kevin O'Neill Ultra-Wideband, Fully Polarimetric Ground Penetrating Radar for UXO Discrimination , 2005 .

[2]  K.W. Wong,et al.  Comparing the performance of different neural networks for binary classification problems , 2009, 2009 Eighth International Symposium on Natural Language Processing.

[3]  Wolfgang Banzhaf,et al.  A comparison of linear genetic programming and neural networks in medical data mining , 2001, IEEE Trans. Evol. Comput..

[4]  Markus Brameier,et al.  On linear genetic programming , 2005 .

[5]  L. Peters,et al.  Buried unexploded ordnance identification via complex natural resonances , 1997 .

[6]  Guoqiang Peter Zhang,et al.  Neural networks for classification: a survey , 2000, IEEE Trans. Syst. Man Cybern. Part C.

[7]  Sara Silva,et al.  GPLAB A Genetic Programming Toolbox for MATLAB , 2004 .

[8]  Hyoung-sun Youn,et al.  Development of unexploded ordnances (UXO) detection and classification system using ultra wide bandwidth fully polarimetric ground penetrating radar (GPR) , 2007 .

[9]  Francisco Herrera,et al.  A Survey on the Application of Genetic Programming to Classification , 2010, IEEE Transactions on Systems, Man, and Cybernetics, Part C (Applications and Reviews).

[10]  Zhengqing Yun,et al.  Comparative study of genetic programming vs. neural networks for the classification of buried objects , 2009, 2009 IEEE Antennas and Propagation Society International Symposium.

[11]  Nyoung-sun Youn,et al.  Autonomous UXO classification using fully polarimetric GPR data , 2004, Proceedings of the Tenth International Conference on Grounds Penetrating Radar, 2004. GPR 2004..

[12]  Chi-Chih Chen,et al.  Automatic UXO classification for fully polarimetric GPR data , 2003, SPIE Defense + Commercial Sensing.