首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >A multi-temporal method for cloud detection, applied to FORMOSAT-2, VENμS, LANDSAT and SENTINEL-2 images
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A multi-temporal method for cloud detection, applied to FORMOSAT-2, VENμS, LANDSAT and SENTINEL-2 images

机译:一种多时间云检测方法,适用于FORMOSAT-2,VENμS,LANDSAT和SENTINEL-2图像

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摘要

Over lands, the cloud detection on remote sensing images is not an easy task, because of the frequent difficulty to distinguish clouds from the underlying landscape, even at a high resolution. Up to now, most high resolution images have been distributed without an associated cloud mask. This situation should change in the near future, thanks to two new satellite missions that will provide optical images combining 3 features: high spatial resolution, high revisit frequency and constant viewing angles. The VENμS (French and Israeli cooperation) mission should be launched in 2012 and the European SENTINEL-2 mission in 2013. Fortunately, two existing satellite missions, FORMOSAT-2 and LANDSAT, enable to simulate the future data of these sensors.Multi-temporal imagery at constant viewing angles provides a new way to discriminate clouded and unclouded pixels, using the relative stability of the earth surface reflectances compared to the quick variations of the reflectance of pixels affected by clouds. In this study, we have used time series of images from FORMOSAT-2 and LANDSAT to develop and test a Multi-Temporal Cloud Detection (MTCD) method. This algorithm combines a detection of a sudden increase of reflectance in the blue wavelength on a pixel by pixel basis, and a test of the linear correlation of pixel neighborhoods taken from couples of images acquired successively.MTCD cloud masks are compared with cloud cover assessments obtained from FORMOSAT-2 and LANDSAT data catalogs. The results show that the MTCD method provides a better discrimination of clouded and unclouded pixels than the usual methods based on thresholds applied to reflectances or reflectance ratios. This method will be used within VENμS level 2 processing and will be proposed for SENTINEL-2 level 2 processing.
机译:在陆地上,在遥感图像上进行云检测并不是一件容易的事,因为即使在高分辨率下也很难将云与底层景观区分开。到目前为止,大多数高分辨率图像都没有关联的云遮罩就可以分发。这种情况将在不久的将来改变,这要归功于两次新的卫星飞行任务,它们将提供结合了三个特征的光学图像:高空间分辨率,高重访频率和恒定的视角。 VENμS(法国和以色列合作)任务应于2012年启动,欧洲SENTINEL-2任务应于2013年启动。幸运的是,现有的两个卫星任务FORMOSAT-2和LANDSAT可以模拟这些传感器的未来数据。恒定视角下的图像提供了一种新方法,该方法使用与受云影响的像素反射率的快速变化相比较的地球表面反射率的相对稳定性来区分浑浊和未浑浊的像素。在这项研究中,我们使用了FORMOSAT-2和LANDSAT的时间序列图像来开发和测试多时相云检测(MTCD)方法。该算法结合了逐个像素检测蓝色波长反射率突然增加的功能,并测试了从连续获取的几对图像中获取的像素邻域的线性相关性.MTCD云掩模与获得的云覆盖评估进行了比较来自FORMOSAT-2和LANDSAT数据目录。结果表明,与基于基于反射率或反射率比率的阈值的常规方法相比,MTCD方法能够更好地识别浑浊和未浑浊的像素。该方法将在VENμS2级处理中使用,并将被建议用于SENTINEL-2 2级处理。

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