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Original Articles

Detection of hyperspectral anomalies using density estimation and collaborative representation

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Pages 1025-1033 | Received 21 Nov 2016, Accepted 20 Jun 2017, Published online: 12 Jul 2017
 

ABSTRACT

The collaborative-representation-based detector (CRD) will misjudge the anomaly pixel under test as a background pixel if there are a few anomalies similar to the pixel under test in the original background. In order to solve the problem, a density-estimation-based background refinement method is proposed to remove the anomalies from the original background. In the method, anomaly degree for each pixel in the original background is estimated by calculating its probability density. A smaller probability density indicates that the pixel has a larger anomaly degree in a background area. Then, pixels with larger anomaly degree are removed from the original background via Otsu’s method. Finally, the refined background is combined with collaborative representation method to detect the anomalies among the hyperspectral imagery. To validate the effectiveness of the proposed algorithm, experiments are conducted on real hyperspectral dataset. The results show that the proposed algorithm performs better compared with the current anomaly detection algorithms.

Acknowledgments

We would like to thank SpecTIR, LLC, for their generous support in collecting the airborne hyperspectral imagery.

Additional information

Funding

This work was supported by National Natural Science Foundation of China under Grant [61405041, 61571145]; Key Program of Heilongjiang Natural Science Foundation under Grant [ZD201216]; Program Excellent Academic Leaders of Harbin under Grant [RC2013XK009003]; and Fundamental Research Funds for the Central Universities Grant [HEUCF1608]; National Natural Science Foundation of China [61405041, 61571145]; Key Program of Heilongjiang Natural Science Foundation [ZD201216].

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