研究目的
Investigating the effectiveness of a novel sparse representation model incorporating spatial regularization for target detection in hyperspectral imagery.
研究成果
The proposed spatial correlation constrained SR algorithm demonstrates improved performance over classical methods by integrating spatial regularization, promoting piecewise continuity of the output while maintaining sparsity. The ADMM-based solution effectively addresses the optimization problem, showing reduced false alarms in both synthetic and real hyperspectral images.
研究不足
The study focuses on specific synthetic and real datasets, and the performance may vary with different hyperspectral images. The computational complexity of the ADMM-based solution may be a limitation for real-time applications.