首页> 外文会议>Remote Sensing for Environmental Monitoring, GIS Applications, and Geology VII; Proceedings of SPIE-The International Society for Optical Engineering; vol.6749 >The application of the covariance matrix statistical method for removing atmospheric effects from satellite remotely sensed data intended for environmental applications
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The application of the covariance matrix statistical method for removing atmospheric effects from satellite remotely sensed data intended for environmental applications

机译:协方差矩阵统计方法在用于环境应用的卫星遥感数据中消除大气影响的应用

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The Covariance Matrix Method (CMM) uses the statistical relationship between all the selected bands of a satellite sensor simultaneously, rather than one at a time as in the regression method. It examines the set of variances and covariance between all band pairs in the image data and CMM provides an average pixel correction for a specified part of a satellite image. It is necessary to know a priori a value for the atmospheric path radiance on one spectral band. From this, CMM enables the estimation of the atmospheric path radiances in all the other bands. Dark pixels must be present in the CMM technique. Indeed, the authors suggest an improved CMM atmospheric correction algorithm. This methodology has been presented as an improved revised version of the CMM atmospheric approach. The authors provide a critical assessment of the suitability of the CMM atmospheric correction using Landsat TM image data of an area consisting low reflectance targets that have been used for several environmental monitoring applications. The proposed improved method produces retrieved surface reflectance within the range of the ground measurements.
机译:协方差矩阵方法(CMM)同时使用卫星传感器的所有选定频段之间的统计关系,而不是像回归方法那样一次使用一个。它检查图像数据中所有波段对之间的一组方差和协方差,CMM为卫星图像的指定部分提供平均像素校正。有必要先验地了解一个光谱带上大气路径辐射的值。由此,CMM可以估算所有其他频段的大气路径辐射。 CMM技术中必须存在暗像素。实际上,作者提出了一种改进的CMM大气校正算法。该方法已作为CMM大气方法的改进修订版提出。作者使用Landsat TM图像数据对包括低反射率目标的区域进行了CMM大气校正的适用性的关键评估,该区域已用于多种环境监测应用程序。所提出的改进方法在地面测量范围内产生了检索到的表面反射率。

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