研究目的
To overcome the problem of weakly Pareto optimal solutions in multiobjective-based hyperspectral band selection methods, provide a theoretical analysis, and develop an improved framework to avoid this issue.
研究成果
The theoretical analysis confirms that weakly Pareto optimal solutions exist in WT-based methods due to the discrete range of band selection. The proposed APBI framework effectively avoids this problem and reduces sensitivity to penalty factors, as validated by experiments showing unique solutions for each band number and comparable performance to state-of-the-art methods.
研究不足
The study focuses on theoretical analysis and validation with specific datasets; the proposed APBI method may not generalize to all hyperspectral data or other optimization problems. The discrete nature of the band selection range inherently limits the avoidance of weakly Pareto optimum in some methods.
1:Experimental Design and Method Selection:
The study involves theoretical analysis and experimental validation of multiobjective optimization methods for hyperspectral band selection, specifically comparing Weighted Tchebycheff (WT) and the proposed Adaptive-Penalty-Based Boundary Intersection (APBI) frameworks.
2:Sample Selection and Data Sources:
Two hyperspectral datasets are used: Indian Pines (IndianP) and Pavia University (PaviaU), obtained from public sources.
3:List of Experimental Equipment and Materials:
A desktop computer with i7-6700K processor,
4:2 GHz, 16-G RAM, and MATLAB 2015a software. Experimental Procedures and Operational Workflow:
Reproduce the GMOBS method (a WT-based approach), implement the proposed APBI method (AMOBS), conduct 200 iterations for IndianP and 40 iterations for PaviaU with a population size of 101, and perform classification experiments using SVM and KNN classifiers.
5:Data Analysis Methods:
Compare the existence of weakly Pareto optimal solutions, computational time, and classification accuracy to validate the theoretical analysis.
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