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IMPROVED CLOUD DETECTION FOR DAYTIME AVHRR SCENES OVER LAND

机译:改进了陆地上白天AVHRR场景的云检测

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Accurate cloud detection, in Advanced Very High Resolution Radiometer (AVHRR) data over land is a difficult task complicated by spatially and temporally varying land surface reflectances and emissivities. The AVHRR Split-and-Merge Clustering (ASMC) algorithm for cloud detection in AVHRR scenes over land provides a computationally efficient, scene-specific, objective way to circumvent these difficulties. The algorithm consists of two steps: 1) a split-and-merge clustering of the input data (calibrated channel 2 albedo, calibrated channel 4 temperature, and a channel 3 - channel 4 temperature difference), which segments the scene into its natural groupings; and 2) a cluster-labelling procedure that uses scene-specific, joint three-dimensional adaptive labelling thresholds (as opposed to constant static thresholds) to label the clusters as either cloud, cloud-free land, or uncertain. The uncertain class is used for those pixels whose signature is not clearly cloud-free land or cloud (e.g., pixels at cloud boundaries that often contain subpixel cloud and land information that has been averaged together by the integrating grating aperture function of the AVHRR instrument). Results show that the ASMC algorithm is neither regionally nor temporally specific and can be used over a large range of solar altitudes. Sensitivity of the segmentation and labelling steps to the choice of input variables also was studied. Results obtained with the ASMC algorithm also compare favorably with those obtained from a wide range of currently used algorithms to detect cloud over land in AVHRR data. Moreov;er, the ASMC algorithm can be adapted for use with data to be taken by the Moderate Resolution Imaging Spectrometer-Nadir (MODIS-N). [References: 34]
机译:在先进的超高分辨率辐射计(AVHRR)中,准确的云探测是一项艰巨的任务,由于时空变化的陆地表面反射率和发射率使其变得复杂。用于在陆地上的AVHRR场景中进行云检测的AVHRR拆分合并聚类(ASMC)算法提供了一种计算效率高,特定于场景的客观方式来规避这些困难。该算法包括两个步骤:1)输入数据的拆分合并聚类(校准的通道2反照率,校准的通道4温度和通道3-通道4温度差),该场景将场景划分为其自然分组; 2)群集标记过程,该过程使用特定于场景的联合三维自适应标记阈值(而不是恒定的静态阈值)将群集标记为云,无云土地或不确定。不确定类别用于那些签名明显不是没有云的陆地或云的像素(例如,云边界处的像素通常包含子像素云和陆地信息,这些信息已通过AVHRR仪器的积分光栅孔径函数进行了平均) 。结果表明,ASMC算法既非区域性的,也非时间性的,可以在很大的太阳高度范围内使用。还研究了分割和标记步骤对输入变量选择的敏感性。使用ASMC算法获得的结果也可以与从目前广泛使用的用于检测AVHRR数据中陆上云的算法获得的结果相媲美。此外,ASMC算法可适用于中等分辨率成像光谱仪(Nadir)采集的数据。 [参考:34]

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