Title :
Sparse Manifold Learning with Applications to SAR Image Classification
Author :
Berisha, Visar ; Shah, Neil ; Waagen, D. ; Schmitt, H. ; Bellofiore, S. ; Spanias, A. ; Cochran, Douglas
Author_Institution :
SenSIP Center, Arizona State Univ., Phoenix, AZ, USA
Abstract :
Nonlinear data-driven dimensionality reduction techniques have recently gained popularity due to the emergence of high dimensional data sets. The algorithmic complexity and storage requirements of these techniques, however, can make them prohibitive in resource-limited applications. It is therefore beneficial to reduce the number of exemplar samples required for performing an out-of-sample extension to a test point. In this paper, we propose a novel method for selecting a minimal set of exemplars and performing the out-of-sample extension. In the case of two-class target recognition with synthetic aperture radar (SAR) data, we compare the efficacy of the proposed approach with other approaches for selecting a subset of the available training samples. We show that the proposed algorithm outperforms the existing methods by providing low-dimensional embeddings that maintain interclass separability using fewer retained exemplars.
Keywords :
image classification; radar imaging; synthetic aperture radar; SAR image classification; algorithmic complexity; high dimensional data sets; nonlinear data-driven dimensionality reduction techniques; out-of-sample extension; resource-limited applications; sparse manifold learning; synthetic aperture radar; two-class target recognition; Azimuth; Computational complexity; Data mining; Image classification; Performance evaluation; Pixel; Synthetic aperture radar; Target recognition; Testing; Vehicles; SAR; classification; dimensionality reduction; out-of-sample extension; reduced complexity Isomap;
Conference_Titel :
Acoustics, Speech and Signal Processing, 2007. ICASSP 2007. IEEE International Conference on
Conference_Location :
Honolulu, HI
Print_ISBN :
1-4244-0727-3
DOI :
10.1109/ICASSP.2007.366873