Home
Improved Feature Extraction Feature Selection And Identification Techniques That Create A Fast Unsupervised Hyperspectral Target Detection
Coles
Improved Feature Extraction Feature Selection And Identification Techniques That Create A Fast Unsupervised Hyperspectral Target Detection
From Robert J Johnson
Current price: $60.51
Loading Inventory...
Size: 0.52 x 9.69 x 0.99
*Product information may vary - to confirm product availability, pricing, and additional information please contact Coles
This research extends the emerging field of hyperspectral image (HSI) target detectors that assume a global linear mixture model (LMM) of HSI and employ independent component analysis (ICA) to unmix HSI images. Via new techniques to fully automate feature extraction, feature selection, and target pixel identification, an autonomous global anomaly detector, AutoGAD, has been developed for potential employment in an operational environment for real-time processing of HSI targets. For dimensionality reduction (initial feature extraction prior to ICA), a geometric solution that effectively approximates the number of distinct spectral signals is presented. | Improved Feature Extraction Feature Selection And Identification Techniques That Create A Fast Unsupervised Hyperspectral Target Detection