4.7 Article

Hyperspectral Sparse Unmixing With Spectral-Spatial Low-Rank Constraint

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JSTARS.2021.3086631

Keywords

Hyperspectral imaging; low-rank constraint; sparse unmixing; weighted sparse regression

Funding

  1. National Natural Science Foundation of China [61901208, 61865012]
  2. China Postdoctoral Science Foundation [2020M672483]
  3. Science and Technology Project of Jiangxi Provincial Department of Education [GJJ190956, GJJ170992]
  4. Basic Science and Technology Research Project of National Key Laboratory of Science and Technology on Automatic Target Recognition [WDZC20205500204]
  5. Jiangxi Provincial Key Research and Development Program [20202BBGL73081, 20181ACG70022]

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The spectral-spatial low-rank sparse unmixing (SSLRSU) algorithm improves unmixing accuracy through double weighting factors and low-rank regularization, showing superior performance compared to other advanced sparse unmixing strategies.
Spectral unmixing is a consequential preprocessing task in hyperspectral image interpretation. With the help of large spectral libraries, unmixing is equivalent to finding the optimal subset of the library entries that can best model the image. Sparse regression techniques have been widely used to solve this optimization problem, since the number of materials present in a scene is usually small. However, the high mutual coherence of library signatures negatively affects the sparse unmixing performance. To cope with this challenge, a new algorithm called spectral-spatial low-rank sparse unmixing (SSLRSU) is established. In this article, the double weighting factors under the l(1) framework aim to improve the row sparsity of the abundance matrix and the sparsity of each abundance map. Meanwhile, the low-rank regularization term exploits the low-dimensional structure of the image, which makes for accurate endmember identification from the spectral library. The underlying optimization problem can be solved by the alternating direction method of multipliers efficiently. The experimental results, conducted by using both synthetic and real hyperspectral data, uncover that the proposed SSLRSU strategy can get accurate unmixing results over those given by other advanced sparse unmixing strategies.

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