4.7 Article

Dimensionality Reduction and Classification of Hyperspectral Image via Multistructure Unified Discriminative Embedding

Journal

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TGRS.2021.3128764

Keywords

Manifolds; Feature extraction; Imaging; Germanium; Collaboration; Linear programming; Hyperspectral imaging; Dimensionality reduction (DR); discriminative learning; graph learning; hyperspectral image (HSI); tangent space

Funding

  1. National Natural Science Foundation of China [62071340, 61801336]
  2. Fundamental Research Funds for the Central Universities [2042020kf0013]
  3. Science and Technology Major Project of Hubei Province (Next-Generation AI Technologies) [2019AEA170]
  4. China Postdoctoral Science Foundation [2019M662717, 2020T130480]

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The research proposes a multistructure unified discriminative embedding (MUDE) method to extract the low-dimensional features of hyperspectral image (HSI), by considering the neighborhood, tangential, and statistical properties of each sample in HSI for achieving the complementarity of different characteristics. Experimental results demonstrate that the proposed method can improve the classification performance of HSI.
Graph can achieve good performance to extract the low-dimensional features of hyperspectral image (HSI). However, the present graph-based methods just consider the individual information of each sample in a certain characteristic, which is very difficult to represent the intrinsic properties of HSI for the complex imaging condition. To better represent the low-dimensional features of HSI, we propose a multistructure unified discriminative embedding (MUDE) method, which considers the neighborhood, tangential, and statistical properties of each sample in HSI to achieve the complementarity of different characteristics. In MUDE, we design the intraclass and interclass neighborhood structure graphs with the local reconstruction structure of each sample; meanwhile, we also utilize the adaptive tangential affine combination structure to construct the intraclass and interclass tangential structure graphs. To further enhance the discriminating performance between different classes, we consider the influence of the statistical distribution difference for each sample to develop an interclass Gaussian weighted scatter model. Then, an embedding objective function is constructed to enhance the intraclass compactness and the interclass separability and obtain more discriminative features for HSI classification. Experiments on three real HSI datasets show that the proposed method can make full use of the structure information of each sample in different characteristics to achieve the complementarity of different features and improve the classification performance of HSI compared with the state-of-the-art methods.

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