Algorithms of target detection on hyperspectral imagery |
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Authors: | Yahui Yan Bingqi Liu |
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Affiliation: | Electronic & Optical Engineering Department, Mechanical Engineering College, Shijiazhuang, Hebei 050003, China |
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Abstract: | With the development of airborne and spaceborne remote sensing from the 1980s, as a new and growing technology, hyperspectral imaging is widely used in different fields, such as military investigation, battlefield information acquisition, environmental monitoring, mineral exploration and public security. Because of the unique characteristic of acquiring spectral and spatial information simultaneously, it brings the hyperspectral detection advantages when dealing with target detection problem under complex conditions. Target detecting models of hyperspectral image are established, including the target subspace model and the probability statistical model. And several algorithms are introduced, which are based on original spectral features, sub-space projection and probability statistical model separately. Comparison shows that if the background includes fault objectives, GLRT is the best algorithm, and its SINR is the largest; on condition of anomaly target detection, LPTD is the best, and have a quite high SINR. |
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Keywords: | Hyperspectral imagery Target detection Original spectral features Subspace projection Probability statistical model |
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