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http://dx.doi.org/10.5515/KJKIEES.2017.28.4.328

De-Noising of HRRP Using EMD for Improvement of Target Identification Performance  

Park, Joon-Yong (Agency for Defense Development)
Lee, Seung-Jae (Department of Electrical Engineering, POSTECH)
Yang, Eunjung (Agency for Defense Development)
Kim, Kyung-Tae (Department of Electrical Engineering, POSTECH)
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Abstract
In this paper, we propose an efficient method to remove noise component contained in high resolution range profile(HRRP) to improve target identification performance. The proposed method can effectively eliminate the noise component using both the statistical characteristics of the noise component and EMD algorithm. Experimental results show that the proposed method can substantially improve the identification capability, removing the noise component effectively.
Keywords
De-Noising; EMD; HRRP; Target Identification;
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