研究目的
To overcome the spectral signature mismatches between an actual spectral signature and its corresponding endmember in spectral library in hyperspectral unmixing by proposing a joint optimizing unmixing model called DSPCSR.
研究成果
The DSPCSR model, which considers dictionary sparse pruning and collaborative sparse regression, demonstrates better performance and robustness compared to other state-of-the-art algorithms, especially in low SNR levels. It shows promise in real hyperspectral image unmixing, closely matching results from geological experts.
研究不足
The technical constraints include the assumption of sparse property of spectral mismatch error and collaborative sparse property of the abundance matrix. Potential areas for optimization include the handling of non-sparse errors and further robustness against noise.
1:Experimental Design and Method Selection:
The DSPCSR model includes dictionary sparse pruning and collaborative sparse regression, exploiting the sparse property of spectral mismatch error and the collaborative sparse property of the abundance matrix.
2:Sample Selection and Data Sources:
Synthetic and real datasets were used, with endmembers randomly chosen from the U.S.G.S library for synthetic data.
3:List of Experimental Equipment and Materials:
Hyperspectral images degraded by white noise under different SNR levels.
4:Experimental Procedures and Operational Workflow:
The ADMM algorithm was applied to solve the minimizing problem, with updates to variables H, X, (cid:101)D, V1, V2, D1, D2 as per the proposed model.
5:Data Analysis Methods:
The signal to reconstruction error (SRE) was adopted to measure unmixing performance.
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