研究目的
To compare traditional dimensionality reduction techniques (PCA, MNF, and ICA) in HSI of the Compact Airborne Spectrographic Imager (CASI) sensor and to evaluate different strategies for selecting the most suitable number of components in the transformed space. Additionally, to determine a new dimensionality reduction approach by dividing the CASI HSI regarding the spectral regions covering the electromagnetic spectrum.
研究成果
MNF was identified as the most suitable dimensionality reduction technique. Entropy measurement, transformed signatures of the classes, and ROIs separability strategies were found to be appropriate for component selection. The spectral division approach slightly improved component selection compared to traditional MNF transformation.
研究不足
The study's results could be influenced by the type of HSI considered, and a more comprehensive study with different types of HSI is recommended.