研究目的
Investigating the potential of unsupervised feature selection techniques for classification tasks with sparse training data.
研究成果
The study demonstrates that unsupervised feature selection techniques can achieve classification results similar to supervised techniques, with the advantage of being independent of the classification task. This suggests that unsupervised feature selection can provide generally versatile features for high-dimensional data classification.
研究不足
The study is limited to high-dimensional hyperspectral data classification with sparse training data. The performance of unsupervised feature selection techniques may vary with different data types and classification tasks.
1:Experimental Design and Method Selection:
The study involves comparing unsupervised feature selection techniques (MUI and TUI) with standard dimensionality reduction and supervised feature selection techniques on four benchmark datasets.
2:Sample Selection and Data Sources:
Four benchmark datasets (Pavia Centre, Pavia University, Salinas, EnMAP) are used, focusing on high-dimensional hyperspectral data.
3:List of Experimental Equipment and Materials:
Hyperspectral imagery from ROSIS and AVIRIS sensors, and simulated EnMAP data.
4:Experimental Procedures and Operational Workflow:
Feature selection is performed using MUI and TUI, followed by classification using NN, LDA, QDA, and RF classifiers.
5:Data Analysis Methods:
Performance is evaluated based on overall accuracy, κ-value, average completeness, average correctness, and average quality across all classes.
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