Improving neural classifiers for ATR using a kernel method for generating synthetic training sets
Tóm tắt
An important problem with the use of neural networks in HRR radar target classification is the difficulty in obtaining training data. Training sets are small because of this, making generalization to new data difficult. In order to improve generalization capability, synthetic radar targets are obtained using a novel kernel method for estimating the probability density function of each class of radar targets. Multivariate Gaussians whose parameters are a function of position and data distribution are used as kernels. In order to assess the accuracy of the estimate, the maximum a posteriori criterion has been used in radar target classification, and compared with the k-nearest-neighbour classifier. The proposed method performs better than the k-nearest-neighbour classifier, demonstrating the accuracy of the estimate. After that, the estimated probability density functions are used to classify the synthetic data in order to use a supervised training algorithm for neural networks. The obtained results show that neural networks perform better if this strategy is used to increase the number of training data. Furthermore, computational complexity is dramatically reduced compared with that of the k-nearest neighbour classifier.
Từ khóa
#Kernel #Neural networks #Statistical analysis #Training data #Chirp modulation #Azimuth #Radar scattering #Gaussian distribution #Probability density function #Radar measurementsTài liệu tham khảo
10.1007/978-1-4899-4493-1
10.1109/72.80266
10.1109/5.726787
yaser, 1995, Hints, Neural Computation, 7, 699
10.1109/SSST.1997.581572
10.1109/7.784076
10.1109/72.80269
10.1109/SSST.2001.918484
aggarwal, 1996, A Comparative Study of Three Paradigms for Object Recognition - Bayesian Statistics, Neural Networks and Expert Systems, Advances in Image Understanding A Festschrift for Azriel Rosen-feld
rogers, 2000, Neural Networks for Automatic Target Recognition, Neural Networks, 8, 1153, 10.1016/0893-6080(95)00050-X
fukunaga, 1990, Introduction to statistical pattern recognition
10.1109/74.207649
10.1109/72.329697