4.7 Article

A Modified Locality-Preserving Projection Approach for Hyperspectral Image Classification

Journal

IEEE GEOSCIENCE AND REMOTE SENSING LETTERS
Volume 13, Issue 8, Pages 1059-1063

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/LGRS.2016.2564993

Keywords

Dimensionality reduction (DR); hyperspectral remote sensing; image classification; unsupervised learning

Funding

  1. Natural Science Foundation of China [41371362, 41501391, 41272364]
  2. Major Special Project-the China High-Resolution Earth Observation System project
  3. National High-Tech R&D Program of China (863 Program) [2013AA12A302]

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Locality-preserving projection (LPP) is a typical manifold-based dimensionality reduction (DR) method, which has been successfully applied to some pattern recognition tasks. However, LPP depends on an underlying adjacency graph, which has several problems when it is applied to hyperspectral image (HSI) processing. The adjacency graph is artificially created in advance, which may not be suitable for the following DR and classification. It is also difficult to determine an appropriate neighborhood size in graph construction. Additionally, only the information of local neighboring data points is considered in LPP, which is limited for improving classification accuracy. To address these problems, a modified version of the original LPP called MLPP is proposed for hyperspectral remote-sensing image classification. The idea is to select a different number of nearest neighbors for each data point adaptively and to focus on maximizing the distance between nonnearest neighboring points. This not only preserves the intrinsic geometric structure of the data but also increases the separability among ground objects with different spectral characteristics. Moreover, MLPP does not depend on any parameters or prior knowledge. Experiments on two real HSIs from different sensors demonstrate that MLPP is remarkably superior to other conventional DR methods in enhancing classification performance.

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