北方农业学报 ›› 2017, Vol. 45 ›› Issue (6): 118-118.

• 农业信息技术·农业经济 • 上一篇    下一篇

RapidEye卫星红边波段对主要农作物识别能力的影响研究

乌云德吉;于利峰;包珺玮;许洪滔;乌兰吐雅   

  1. 内蒙古农牧业科学院农牧业经济与信息研究所,内蒙古呼和浩特010031
  • 出版日期:2017-12-20 发布日期:2017-12-20
  • 通讯作者: 乌云德吉
  • 作者简介:乌云德吉(1987-),女(蒙古族),助理研究员,硕士,主要从事农业遥感监测的研究工作.
  • 基金资助:
    内蒙古农牧业科学院青年创新基金项目(2015CXJJN05;2017QNJJN10); 内蒙古财政厅项目

Impact of red-edge waveband of RapidEye satellite on recognition ability of main crop

Wuyundeji,YU Lifeng,BAO Junwei,XU Hongtao,Wulantuya(Institute of Rural Economic and Information,Inner Mongolia Academy of Agricultural and Animal Husbandry Sciences,Hohhot 010031,China)   

  • Online:2017-12-20 Published:2017-12-20

摘要: 德国RapidEye卫星在传统的可见光波段和近红外波段的基础上加入了红边波段,红边波段更有利于地表植被分类和监测植被生长状态。为了定量分析RapidEye卫星影像加入红边波段后对地物识别能力的影响,文章利用内蒙古呼伦贝尔市莫力达瓦达斡尔族自治旗哈达阳镇2017年7月25日的RapidEye数据,采用BP神经网络的监督分类方法,提取了研究区内玉米和大豆面积,并计算了有红边和无红边条件下该地区玉米、大豆以及其他作物之间的可分性测度和混淆矩阵,对比了这两种波段组合形式下农作物提取的可分性和基于混淆矩阵的分类精度。结果证明:引入红边波段后,玉米-大豆、大豆-其他、玉米-其他的可分性测度分别从1.71、1.97、1.91提高到1.99、1.99、1.93。总体分类精度从79.57%提高到84.14%,Kappa系数从0.63提高到了0.71。该结果证明,红边波段对区分玉米-大豆的能力有显著提高,区分其他地物的能力也有了明显提升。国外搭载红边波段的卫星载荷越来越多,国产卫星也拟引入红边波段载荷技术,为农业部门提供更可靠的数据支持,文章的研究结果能为国产红边波段数据在农业上的应用提供参考。

Abstract: On the basis of the traditional visible band and near infrared band, the German Rapid Eye satellite sensor provides red-edge waveband which is more conducive to the classification of surface vegetation and the monitor of vegetation growth. In order to quantitatively analyze the impact of recognition ability which Rapid Eye satellite images adding the red edge band, the area of corn and soybean in the study area was extracted with the monitoring classification method based on BP neural network by using the Rapid Eye satellite remote sensing data of Hadayang town, Hulunbuir, Inner Mongolia on July 25, 2017. Separable measure and confusion matrix of corn, soybean and other kinds of ground objects in the region were calculated under 2 kinds of waveband combinations with or without the involvement of red-edge waveband.Furthermore, the separability of crop extraction and classification accuracy based on confusion matrix was compared and the classification accuracy verification was evaluated by the study area visual interpretation results. The results show that : The degree of separation between corns and soybeans, soybeans and others, as well as corn and others were improved from 1.71 to 1.99, from 1.97 to 1.99, from 1.91 to 1.93, respectively. The overall accuracy was increased from 79.57% to 84.14%,and the Kappa coefficient was increased from 0.63 to 0.71. The combined data obtained in this study demonstrated that the red-edge waveband significantly improved the ability to distinguish corn from soybean and other objects. There are more and more satellite loads on the red-edge waveband in foreign countries. The domestic satellite also plans to introduce the rededge waveband load technology, which provides more reliable data support for the agricultural administration sector. The results of this study provide reference for the application of red-edge waveband data in agriculture.

中图分类号: 

  • S127