Title :
Graph-Based Feature Selection for Object-Oriented Classification in VHR Airborne Imagery
Author :
Chen, Xi ; Fang, Tao ; Huo, Hong ; Li, Deren
Author_Institution :
Autom. Dept., Shanghai Jiao Tong Univ., Shanghai, China
Abstract :
Linearly nonseparability and class imbalance of very high resolution (VHR) imagery make feature selection for object-oriented classification quite challenging, while such characteristics, especially class imbalance, have usually been ignored in open literature. To cope with the challenges, this paper proposes a new graph-based feature selection method named locally weighted discriminating projection (LWDP). First, the popular graph-based criteria of feature selection are reformulated to present linear or nonlinear mapping in feature space. Second, weight matrices of graphs characterize dissimilarity rather than similarity between pairwise neighbors, to well-preserved local structure when the difference of distance between a sample and its neighbors is large. Finally, LWDP provides a new perspective to alleviate class imbalance at both global and local levels, by restricting the pairwise relationships in the weight matrices. Specifically, neighborhood unions are introduced to employ the local class distribution and class size to constrain pairwise relationships in the weight matrices when classifying unbalanced sample sets. To evaluate the performances of LWDP in low dimensions, a holistic scoring scheme is proposed to stress the performances under low dimensions. In addition, overall accuracy curves and Kappa Index of Agreement (KIA) curves, which exhibit KIA in dimensions, are also used. The experimental results show that LWDP and its kernel extension outperform the other classic or latest methods in processing unbalanced sample set of VHR airborne imagery.
Keywords :
graph theory; image resolution; matrix algebra; object detection; KIA curves; LWDP; VHR airborne imagery; VHR imagery; class imbalance; graph weight matrices; graph-based criteria; graph-based feature selection; holistic scoring scheme; kappa index of agreement curves; kernel extension; linearly nonseparability; local class distribution; locally weighted discriminating projection; neighborhood unions; nonlinear mapping; object-oriented classification; overall accuracy curves; pairwise neighbors; pairwise relationships; very high resolution imagery; Accuracy; Feature extraction; Filters; Hyperspectral sensors; Image recognition; Image resolution; Kernel; Nearest neighbor searches; Noise; Object oriented modeling; Performance evaluation; Remote sensing; Research and development; Stress; Weight measurement; Class imbalance; feature selection; linear nonseparability; neighborhood unions; object-oriented classification;
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
DOI :
10.1109/TGRS.2010.2054832