Title :
Supervised Graph Embedding for Polarimetric SAR Image Classification
Author :
Shi, Lei ; Zhang, Lefei ; Yang, Jie ; Zhang, Liangpei ; Li, Pingxiang
Author_Institution :
State Key Lab. of Inf. Eng. in Surveying, Mapping & Remote Sensing, Wuhan Univ., Wuhan, China
Abstract :
This letter introduces an efficiency-manifold-learning-based supervised graph embedding (SGE) algorithm for polarimetric synthetic aperture radar (POLSAR) image classification. We use a linear dimensionality reduction technology named SGE to obtain a low-dimensional subspace which can preserve the discriminative information from training samples. Various POLSAR decomposition features are stacked into the input feature cube in the original high-dimensional feature space. The SGE is then implemented to project the input feature into the learned subspace for subsequent classification. The suggested method is validated by the full polarimetric airborne SAR system EMISAR, in Foulum, Denmark. The experiments show that the SGE presents a favorable classification accuracy and the valid components of the multifeature cube are also distinguished.
Keywords :
airborne radar; embedded systems; graph theory; image classification; learning (artificial intelligence); radar computing; radar imaging; radar polarimetry; synthetic aperture radar; EMISAR; POLSAR decomposition feature; POLSAR image classification; SGE algorithm; efficiency-manifold-learning; high-dimensional feature space; linear dimensionality reduction technology; low-dimensional subspace; multifeature cube; polarimetric airborne SAR system; polarimetric synthetic aperture radar image classification; supervised graph embedding algorithm; Accuracy; Hyperspectral sensors; Manifolds; Noise; Optimization; Principal component analysis; Classification; dimensionality reduction (DR); graph embedding; polarimetric synthetic aperture radar (POLSAR);
Journal_Title :
Geoscience and Remote Sensing Letters, IEEE
DOI :
10.1109/LGRS.2012.2198612