Leveraging band diversity for feature selection in EO data
- URL: http://arxiv.org/abs/2502.04713v1
- Date: Fri, 07 Feb 2025 07:30:29 GMT
- Title: Leveraging band diversity for feature selection in EO data
- Authors: Sadia Hussain, Brejesh Lall,
- Abstract summary: We propose a method of selecting diverse bands using determinantal point processes in correlated bands.
This analysis can be fed to any Machine learning model to enable detailed analysis and monitoring with high precision and accuracy.
- Score: 6.508088032296086
- License:
- Abstract: Hyperspectral imaging (HSI) is a powerful earth observation technology that captures and processes information across a wide spectrum of wavelengths. Hyperspectral imaging provides comprehensive and detailed spectral data that is invaluable for a wide range of reconstruction problems. However due to complexity in analysis it often becomes difficult to handle this data. To address the challenge of handling large number of bands in reconstructing high quality HSI, we propose to form groups of bands. In this position paper we propose a method of selecting diverse bands using determinantal point processes in correlated bands. To address the issue of overlapping bands that may arise from grouping, we use spectral angle mapper analysis. This analysis can be fed to any Machine learning model to enable detailed analysis and monitoring with high precision and accuracy.
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