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- Title
Improved Classification Method Based on the Diverse Density and Sparse Representation Model for a Hyperspectral Image.
- Authors
Li, Na; Wang, Ruihao; Zhao, Huijie; Wang, Mingcong; Deng, Kewang; Wei, Wei
- Abstract
To solve the small sample size (SSS) problem in the classification of hyperspectral image, a novel classification method based on diverse density and sparse representation (NCM_DDSR) is proposed. In the proposed method, the dictionary atoms, which learned from the diverse density model, are used to solve the noise interference problems of spectral features, and an improved matching pursuit model is presented to obtain the sparse coefficients. Airborne hyperspectral data collected by the push-broom hyperspectral imager (PHI) and the airborne visible/infrared imaging spectrometer (AVIRIS) are applied to evaluate the performance of the proposed classification method. Results illuminate that the overall accuracies of the proposed model for classification of PHI and AVIRIS images are up to 91.59% and 92.83% respectively. In addition, the kappa coefficients are up to 0.897 and 0.91.
- Subjects
HYPERSPECTRAL imaging systems; IR spectrometers; INFRARED imaging; DENSITY; CLASSIFICATION; IMAGE
- Publication
Sensors (14248220), 2019, Vol 19, Issue 24, p5559
- ISSN
1424-8220
- Publication type
Article
- DOI
10.3390/s19245559