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遥感技术与应用
遥感应用     
秸秆焚烧火点遥感监测算法实现
许青云1,2,顾伟伟1,2,谢涛1,2,刘锐1,2
(1.中科宇图科技股份有限公司,北京100101;2.中科宇图(北京)资源环境科学研究有限公司,北京100101)
CropStraw Fire Remote Sensing Monitoring and Its Algorithm Implementation
Xu Qingyun1,2,Gu Weiwei1,2,Xie Tao1,2,Liu Rui1,2
(1.China Sciences Map Universe Technology Co.,Ltd(MAPUNI),Beijing 100101,China;2.Institute of Resources and Environment Science(IRES),MAPUNI,Beijing,100101,China)
 全文: PDF(3621 KB)  
摘要:
为了获取华中区域的秸秆焚烧火点空间分布信息,实现对该区域秸秆焚烧的有效管控,以2014年MODIS L1B 遥感数据为主要数据源,结合土地利用类型数据,以华中的农田为研究区域,基于增强型上下文火点遥感影像识别方法,充分利用定量遥感的理论知识及地理空间数据抽象库(GDAL)等技术手段,实现了华中区域秸秆焚烧火点的识别。利用中华人民共和国环境保护部发布的全国秸秆焚烧火点日报和MODIS标准火点产品(MYD14)进行空间和定量上的对比分析。研究结果表明,该算法能够有效地进行研究区域的秸秆焚烧火点遥感监测,并且可以依据研究区域的特点进行参数的实时调整,提高了秸秆焚烧火点提取的自动化和工作效率。
关键词: MODIS秸秆焚烧火点遥感GDAL    
Abstract: in order to obtain the information and achieve the effective control of crop straw fire spatial distribution in Central China Region.The MODIS L1B remote sensing datasets during 2014 for the main data source in this article,and combined with land use data,the farmland of Central China Region was taken as study region.Based on the enhanced contextual fire remote sensing detection algorithm,and make full use of the theoretical knowledge of quantitative remote sensing and Geospatial Data Abstraction Library (GDAL)and other technical means,to achieve the crop straw fire recognition in Central China Region.Using Ministry of Environmental Protection of the People’s Republic of China release the daily newspaper of crop straw fire in China and the standard fire products (MYD14)of MODIS for the comparative analysis of the quantitative and spatial.The results indicate that the algorithmof this paper can achieve crop straw fire remote sensing monitoring of this study region effectively,and the parameters can be adjusted in real time based on the characteristic of the study region,and improve the automation and working efficiency of crop straw fire monitoring.
Key words: MODIS    Crop straw fire    Remote sensing    GDAL
收稿日期: 2016-05-03 出版日期: 2017-09-13
:  X 87  
基金资助: 广东省省级科技计划项目(2014A010101151)。
作者简介: 许青云(1989-),女,北京人,硕士,工程师,主要从事遥感技术应用研究及遥感影像应用开发工作。Email:nishang_dale@126.com。
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引用本文:

许青云,顾伟伟,谢涛,刘锐. 秸秆焚烧火点遥感监测算法实现[J]. 遥感技术与应用, 10.11873/j.issn.1004-0323.2017.4.0728.

Xu Qingyun,Gu Weiwei,Xie Tao,Liu Rui. CropStraw Fire Remote Sensing Monitoring and Its Algorithm Implementation. Remote Sensing Technology and Application, 10.11873/j.issn.1004-0323.2017.4.0728.

链接本文:

http://www.rsta.ac.cn/CN/10.11873/j.issn.1004-0323.2017.4.0728        http://www.rsta.ac.cn/CN/Y2017/V32/I4/728

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