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基于面向对象方法的汶川地震土地覆被快速提取

Fast Land Cover Extraction of Wenchuan Earthquake with the Object-Oriented Method

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【作者】 肖红光丁美青彭文澜阮琼花

【Author】 XIAO Hong-guang 1,DIGN Mei-qing 2,3,PENG Wen-lan 2,RUAN Qiong-hua2(1.School of Computing and Communication Engineering,Changsha University of Science & Technology,Changsha 410004; 2.School of Traffic and Transportation Engineering,Changsha University of Science & Technology,Changsha 410004; 3.School of Geosciences and Info-Physics of Center South University,Changsha 410083 China)

【机构】 长沙理工大学计算机与通信工程学院长沙理工大学交通运输工程学院中南大学地球科学与信息物理学院

【摘要】 "5.12"汶川8.0级地震后,如何高精度快速提取灾害背景特征参数成为遥感技术在地震应急工作中应用研究的关键.随着高分辨率遥感影像的发展,传统基于像元的分类技术已不能满足需求,引入面向对象的信息提取技术,充分挖掘影像对象的纹理、形状和相互关系等信息,能够有效的提高震害的分类速度与精度.本文通过获取北川县城及附近震前震后的福卫二号影像,对北川县城震前震后的土地覆被变化进行面向对象方法的快速提取.研究表明,面向对象分类方法精度高,Kappa系数远大于传统的监督分类方法,提取速度快,能满足提取速度8小时以内的要求.

【Abstract】 After the Wenchuan MS8.0 earthquake occurred on May 12,how to extracting disaster background characteristic parameters with high precision and speed has become the key to remote sensing technology applied in earthquake emergency work.With the development of high-resolution images,the traditional pixel-based classification is not able to meet the requirement.In order to fully excavate the texture,shape and relationship information of remote sensing data,we introduced an object-oriented method and way to extracting the land cover.This paper collects Beichuan FORMOSAT-2 images before and after the earthquake,uses object-oriented method to extracting of land cover rapidly in the pilot area before and after the earthquake.Compared to pixel-based classification,the results showed the object-oriented classification has high classification precision,its Kappa coefficient is much larger than traditional Supervised Classification method,extration speed is fast,it can completely meet the requirements of extracting land cover after earthquake in 8 hours.

【基金】 国家科技支撑计划项目(2008BAK49B02);湖南省教育厅项目(10C0390)
  • 【文献出处】 湘潭大学自然科学学报 ,Natural Science Journal of Xiangtan University , 编辑部邮箱 ,2012年01期
  • 【分类号】P237;P315.9
  • 【被引频次】2
  • 【下载频次】115
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