Passive millimeter-wave target recognition based on Laplacian eigenmaps

Luo Lei、Li Yuehua、Luan Yinghong

Strategic Study of CAE ›› 2010, Vol. 12 ›› Issue (3) : 77-81.

PDF(928 KB)
PDF(928 KB)
Strategic Study of CAE ›› 2010, Vol. 12 ›› Issue (3) : 77-81.

Passive millimeter-wave target recognition based on Laplacian eigenmaps

  • Luo Lei、Li Yuehua、Luan Yinghong

Author information +
History +

Abstract

Aiming at the disadvantages of feature extraction and selection in the traditional method for passive millimeter-wave (MMW) metal target recognition, the existence and characteristics of low dimensional manifold of the short-time Fourier spectrum of metal target echo signal are explored using manifold learning algorithm, Laplacian eigenmaps. Target classification is performed through comparing the similarity of the test samples and the positive class in terms of the low dimensional manifold. The experiments show that the method gets higher recognition rate than other linear and kernel-based nonlinear dimensionality reduction algorithm, and is robust to data aliasing.

Keywords

manifold learning / Laplacian eigenmaps / nonlinear dimensionality reduction / low dimensional manifold / MMW

Cite this article

Download citation ▾
Luo Lei,Li Yuehua,Luan Yinghong. Passive millimeter-wave target recognition based on Laplacian eigenmaps. Strategic Study of CAE, 2010, 12(3): 77‒81
AI Summary AI Mindmap
PDF(928 KB)

Accesses

Citations

Detail

Sections
Recommended

/