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应用生态学报 ›› 2018, Vol. 29 ›› Issue (1): 44-52.doi: 10.13287/j.1001-9332.201801.011

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基于面向对象的QuickBird遥感影像林隙分割与分类

毛学刚*, 杜子涵, 刘家倩, 陈树新, 侯吉宇   

  1. 东北林业大学林学院, 哈尔滨 150040
  • 收稿日期:2017-06-05 出版日期:2018-01-18 发布日期:2018-01-18
  • 通讯作者: * E-mail: maoxuegang@aliyun.com
  • 作者简介:毛学刚,男,1981年生,讲师.主要从事面向对象遥感分类、遥感在林业上应用研究.E-mail: maoxuegang@aliyun.com
  • 基金资助:
    本文由国家自然科学基金项目(31300533)和国家级大学生创新训练项目资助

Object-oriented segmentation and classification of forest gap based on QuickBird remote sensing image.

MAO Xue-gang*, DU Zi-han, LIU Jia-qian, CHEN Shu-xin, HOU Ji-yu   

  1. School of Forestry, Northeast Forestry University, Harbin 150040, China
  • Received:2017-06-05 Online:2018-01-18 Published:2018-01-18
  • Contact: * E-mail: maoxuegang@aliyun.com
  • Supported by:
    This work was supported by the National Natural Science Foundation of China (31300533) and the National Undergraduate Innovative Training Program.

摘要: 传统的实地调查和人工解译方法已经不能满足区域尺度的林隙获取,高空间分辨率遥感影像的出现为区域尺度的林隙获取提供了可能.本研究采用QuickBird高空间分辨率光学遥感影像,结合面向对象分类技术对福建省三明市将乐县将乐国有林场进行林隙分割与分类.在面向对象分类过程中,采用10种尺度(10~100,步长为10)对QuickBird遥感影像进行分割,应用参考对象相交面积(RAor)和分割对象相交面积(RAos)进行分割结果评价.对每个尺度分割结果应用16个光谱特征,采用向量机分类器(SVM)进行林隙、非林隙和其他类型分类.结果表明: 通过RAorRAos等值法获得最优分割尺度参数为40.不同尺度参数之间的分类总精度最高相差22%.在最优尺度下,应用SVM分类器对林隙、非林隙和其他类型分类的总精度高达88%(Kappa=0.82).采用高空间分辨率遥感数据并结合面向对象的方法,可以代替传统的实地调查和人工解译对区域尺度的林隙进行识别分类.

Abstract: Traditional field investigation and artificial interpretation could not satisfy the need of forest gaps extraction at regional scale. High spatial resolution remote sensing image provides the possibility for regional forest gaps extraction. In this study, we used object-oriented classification method to segment and classify forest gaps based on QuickBird high resolution optical remote sensing image in Jiangle National Forestry Farm of Fujian Province. In the process of object-oriented classification, 10 scales (10-100, with a step length of 10) were adopted to segment QuickBird remote sensing image; and the intersection area of reference object (RAor) and intersection area of segmented object (RAos) were adopted to evaluate the segmentation result at each scale. For segmentation result at each scale, 16 spectral characteristics and support vector machine classifier (SVM) were further used to classify forest gaps, non-forest gaps and others. The results showed that the optimal segmentation scale was 40 when RAor was equal to RAos. The accuracy difference between the maximum and minimum at different segmentation scales was 22%. At optimal scale, the overall classification accuracy was 88% (Kappa=0.82) based on SVM classifier. Combining high resolution remote sensing image data with object-oriented classification method could replace the traditional field investigation and artificial interpretation method to identify and classify forest gaps at regional scale.