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12 March 2019 Dictionary learning based target detection for hyperspectral image
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Abstract
Target detection of hyperspectral image has always been a hot research topic, especially due to its important applications in military and civilian remote sensing. This paper employs the idea of classification and proposes a novel detection framework which incorporates dictionary learning and discriminative information. Due to the fact that target pixels lie in different subspace with background pixels, a novel detection model is proposed. In addition, a linear kernel is applied to project the image data into high-dimensional space, separating the target pixels and background pixels. Synthetic image and popular real hyperspectral image are used to evaluate our algorithm. Experimental results indicate that our proposed detector outperforms the traditional detection methods.
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Xiaorong Zhang, Bingliang Hu, Zhibin Pan, and Xi Zheng "Dictionary learning based target detection for hyperspectral image", Proc. SPIE 11023, Fifth Symposium on Novel Optoelectronic Detection Technology and Application, 110232D (12 March 2019); https://doi.org/10.1117/12.2519943
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