首页> 外文会议>Society of Photo-Optical Instrumentation Engineers Conference on Image and Signal Processing for Remote Sensing >Fusion and Atmospheric Correction Techniques on Multitemporal Multisensor Satellite data for the Detection of burnt areas in Western Peloponnese, Greece
【24h】

Fusion and Atmospheric Correction Techniques on Multitemporal Multisensor Satellite data for the Detection of burnt areas in Western Peloponnese, Greece

机译:融合和大气校正技术对群伯罗奔尼斯西部烧焦区烧毁区的多师和多传感器卫星数据

获取原文

摘要

The objective of this study was to process multitemporal and multisensor satellite data for the detection of burnt areas in Western Peloponnese, Greece. The broader region combines at the same time the characteristics of an urban, a coastal and a rural area. In 1986, 1998 and in 2000 three big fires have burnt more than 500.000.000 m~2 of forest and rural land accordingly to the local authorities. In order to detect the vegetation changes for the period 1984-2001 we used the following multitemporal and multisensor satellite images in which we applied different vegetation indexes. A Landsat 5 TM cloud free subscene, acquired on July 27 1984 and on September 18 1986, Two KFA-1000 images of September 1986, A Landsat 7 ETM cloud free subscene, acquired on July 28 1999, Four Terra Aster cloud free scenes acquired on August 31 2000 and on August 18 2001. As the images have been acquired from different sensors and at different dates we used absolute atmospheric correction algorithms in order to reduce the phenomena of atmospheric attenuation. We fused multispectral ETM data with panchromatic data as well as TM multispectral data of 1984 & 1986 with high-resolution data of the Russian camera KFA-1000. All the fused images have been resampled in 15 meters resolution in order to compare them with Aster Vnir data (that have 15m resolution). The local authorities have mapped the burnt areas using traditional methods. We used the produced maps in order to check the results of the use of Vegetation Indexes with the above satellite data for burnt areas detection. All the indexes gave good results in the detection of burnt areas. SAVI and NDVI gave the most precise results. We produced thematic maps of the burnt areas. The general conclusion is that we can use multitemporal and multisensor satellite data with the vegetation indexes for the mapping of burnt areas and the vegetation monitoring. Atmospheric correction and data fusion techniques should be used in order to make the multisensor and multitemporal satellite data comparable.
机译:本研究的目的是加工多信生和多传感器卫星数据,以检测伯罗奔尼撒,希腊西部的烧焦区域。更广泛的地区同时结合了城市,沿海和农村地区的特点。 1986年,1998年,2000年,三大火灾涉及地方当局的森林和农村土地超过500.000.000米〜2。为了检测1984-2001期间的植被变化,我们使用以下多信道和多传感器卫星图像,我们施加了不同的植被指标。一个Landsat 5 TM云自由子世,1984年7月27日和1986年9月18日收购,1986年9月18日的两张KFA-1000图像,一个Landsat 7 ETM云免费子世,1999年7月28日收购了四个Terra艾斯特云的自由场景2000年8月31日和2001年8月18日。由于图像从不同的传感器获取,并且在不同的日期中我们使用绝对的大气校正算法,以减少大气衰减的现象。我们使用Panchromatic数据以及1984&1986的TM多光谱数据融合了多光谱ETM数据,具有俄罗斯相机KFA-1000的高分辨率数据。所有融合的图像都以15米的分辨率重新采样,以便将它们与ASTER VNIR数据进行比较(具有15M分辨率)。当地当局使用传统方法映射了烧焦区域。我们使用了生产的地图,以检查使用上述卫星数据的植被指标的使用,用于烧毁区域检测。所有索引都在检测烧焦区域方面得到了良好的结果。 Savi和NDVI提供了最精确的结果。我们生产了烧焦区域的主题地图。一般的结论是,我们可以使用多师和多传感器卫星数据与植被指标进行烧焦区域和植被监测。应使用大气校正和数据融合技术,以使多传感器和多型卫星数据相当。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号