研究目的
To assess mineral identification using hyperspectral infrared imagery in laboratory conditions, focusing on nine different minerals, by employing Sparse PCA-based K-means clustering for automated identification and comparing spectra to the ASTER spectral library.
研究成果
The proposed approach demonstrated promising performance for mineral identification in LWIR hyperspectral imagery but showed sensitivity to noise. Future work could explore factorised analysis based clustering for improved accuracy.
研究不足
The approach is sensitive to noise, with accuracy dropping significantly with added noise levels. The size of grains in the experiment and low spatial resolution of the ROI also affect performance.
1:Experimental Design and Method Selection:
Utilized a hyperspectral camera in LWIR with a LW-macro lens, an infragold plate, and a heating source. Sparse PCA-based K-means clustering was employed for categorizing pixel-spectra.
2:Sample Selection and Data Sources:
Targeted nine different minerals for identification.
3:List of Experimental Equipment and Materials:
TELOPS HYPER-CAM portable FT-IR hyperspectral camera, LWIR PV-MCT focal plane array detector, heating source, infragold plate.
4:Experimental Procedures and Operational Workflow:
Active thermography experiment with external heating source, spectral comparison techniques (SAM and NCC) for measuring spectral difference.
5:Data Analysis Methods:
Spectral averaging for selecting best representatives of each cluster, comparison to ASTER spectral library.
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