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基于结构特征分析的COSMO-SkyMed图像商用船舶分类算法
引用本文:蒋少峰,王超,吴樊,张波,汤益先,张红. 基于结构特征分析的COSMO-SkyMed图像商用船舶分类算法[J]. 遥感技术与应用, 2014, 29(4): 607-615. DOI: doi:10.11873/j.issn.1004-0323.2014.4.0607
作者姓名:蒋少峰  王超  吴樊  张波  汤益先  张红
作者单位:(1.中国科学院遥感与数字地球研究所数字地球实验室,北京100094;;2.中国科学院大学,北京100049)
基金项目:国家自然科学基金项目(41331176)
摘    要:船舶分类与识别对于海洋交通运输监测与管理具有重要意义,同时也是SAR海洋应用的重要组成部分。COSMO|SkyMed高分辨率合成孔径雷达(SAR)图像下,商用船舶的结构轮廓明显,散货船、集装箱船和油船的特征清晰可辨,为船舶识别分类提供有效支持。提出了一种基于结构特征分析的商用船舶分类算法,通过提取核密度估计值、船舶积分主轴位置及左中右3部分积分量比例等特征,可实现船舶类型的区分。通过在东海试验区的同步实验,证明COSMO|SkyMed图像商用船舶分类算法的平均分类精度达到89.94%。

关 键 词:合成孔径雷达  特征提取  船舶分类  核密度估计  

Algorithm for Merchant Ship Classification in COSMO-SkyMed Images based on Structural Feature Analysis
Jiang Shaofeng,Wang Chao,Wu Fan,Zhang Bo,Tang Yixian,Zhang Hong. Algorithm for Merchant Ship Classification in COSMO-SkyMed Images based on Structural Feature Analysis[J]. Remote Sensing Technology and Application, 2014, 29(4): 607-615. DOI: doi:10.11873/j.issn.1004-0323.2014.4.0607
Authors:Jiang Shaofeng  Wang Chao  Wu Fan  Zhang Bo  Tang Yixian  Zhang Hong
Affiliation:(1.The Key Lab of Digital Earth,Institute of Remote Sensing and Digital Earth,;Chinese Academy of Sciences,Beijing100094,China;;2.University of Chinese Academy of Sciences,Beijing 100049,China)
Abstract:Ship classification and identification is of great significance for monitoring and management of marine transportation,and it’s an important part of the SAR ocean applications.In the high resolution SAR images of COSMO|SkyMed,structural outlines of merchant ships are clear.Features of bulk carriers,container ships and oil tankers are legible,which provides support of ship classification effectively.This paper proposes an algorithm for merchant ship classification,which is based on structural feature analysis.Ship types are determined by feature extractions of Kernel Density Estimation,location of main axis,and the integration of left|middle|right part of the ship hull.Synchronous experiments performance in East China Sea shows that the average classification accuracy of the proposed algorithm is 89.94%.
Keywords:SAR  Feature extraction  Ship classification  Kernel density estimation  
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