首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Selection of the automated thresholding algorithm for the Multi-angle Imaging SpectroRadiometer Radiometric Camera-by-Camera Cloud Mask over land
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Selection of the automated thresholding algorithm for the Multi-angle Imaging SpectroRadiometer Radiometric Camera-by-Camera Cloud Mask over land

机译:陆上多角度成像光谱辐射计辐射计逐个摄像机云掩模的自动阈值算法选择

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The Radiometric Camera-by-Camera Cloud Mask (RCCM) is archived at the NASA Langley Distributed Active Archive Center as one of the standard products from the Multi-angle Imaging SpectroRadiometer (MISR) mission. The RCCM algorithm applied over land surfaces uses an Automated Threshold Selection Algorithm (ATSA) to derive thresholds that are applied to a cloud masking test to determine whether a given image pixel is clear or contains cloud. In this article, we established a framework for the selection of ATSA and the cloud masking tests, which is not only suitable for the RCCM over land, but cloud detection for other satellite missions. Using this framework, we have under-taken the largest comparison of existing histogram-based ATSAs (16 in total) and applied them to four cloud masking tests that can be constructed from the MISR radiances, namely the red channel bidirectional reflectance function (BRF), the standard deviation (STDV) of the red channel BRF, the normalized difference vegetation index (NDVI), and a parameter D that is constructed by optimizing the information from NDV1 and red channel BR-F for cloud detection. The cloud masking tests and ATSAs are applied to 35 MISR scenes from six snow-free land surface types. To evaluate their performances reference cloud masks are constructed for the 35 scenes using interactive, supervised learning, visualization software. Independent of the ATSA and as a single cloud masking test, D performed the best in terms of having the lowest misclassification rate using the best possible threshold, the highest bimodal rate in the shape of the histograms derived from the 35 scenes, and the least sensitivity to errors in the choice of threshold. Of the 16 ATSAs, the methods of Li and Lee [Li, C.H., and Lee, C.K., (1993). Minimum cross-entropy thresholding. Pattern Recognition, 26(4), 617-625.] and Pal and Bhandari [Pal, N. R., and Bhandari, D., (1993). Image thresholding: some new techniques. Signal Processing, 33, 139-158.] performed the best when applied to D, with essentially unbiased performance and a root mean square of 15% when compared to cloud masks using the best possible thresholds. It is recommended that increased perfon-nance of the RCCM-land algorithm can be had through an increase in the space-time sampling used to generate histograms of D and the addition of a STDV cloud masking test to improve the detection of small cumulus clouds. (c) 2006 Elsevier Inc. All rights reserved.
机译:辐射摄影机云遮罩(RCCM)作为多角度成像光谱辐射仪(MISR)任务的标准产品之一,被存档在NASA兰利分布式活动档案中心。应用于陆地表面的RCCM算法使用自动阈值选择算法(ATSA)来导出阈值,该阈值将应用于云遮罩测试以确定给定图像像素是否清晰或包含云。在本文中,我们建立了一个选择ATSA和进行云掩蔽测试的框架,该框架不仅适用于陆上RCCM,而且适用于其他卫星任务的云检测。使用此框架,我们对现有的基于直方图的ATSA(总共16个)进行了最大的比较,并将它们应用于可以根据MISR辐射构造的四个云掩蔽测试,即红色通道双向反射函数(BRF) ,红色通道BRF的标准偏差(STDV),归一化植被指数(NDVI)和参数D,该参数D是通过优化来自NDV1和红色通道BR-F的信息进行云检测而构造的。云遮蔽测试和ATSA被应用于来自六种无雪地面类型的35个MISR场景。为了评估其性能,使用交互式,监督学习的可视化软件为35个场景构建了参考云遮罩。与ATSA无关,并且作为单个云遮罩测试,D在使用可能的最佳阈值,最低的错误分类率,从35个场景派生的直方图形状中的最高双峰率方面表现最佳。错误选择阈值。在16种ATSA中,Li和Lee的方法[Li,C.H.和Lee,C.K.,(1993)。最小交叉熵阈值。模式识别,26(4),617-625。]和Pal和Bhandari [Pal,N. R.和Bhandari,D.,(1993)。图像阈值处理:一些新技术。信号处理,33,139-158。]应用于D时表现最佳,与使用最佳阈值的云模板相比,其性能基本无偏且均方根为15%。建议通过增加用于生成D直方图的时空采样并增加STDV云掩蔽测试以改善对小积云的检测,来提高RCCM-land算法的性能。 (c)2006 Elsevier Inc.保留所有权利。

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