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首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >Automated Retrieval of Cloud Masks from the HJ-1 WVC Imagery
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Automated Retrieval of Cloud Masks from the HJ-1 WVC Imagery

机译:从HJ-1 WVC影像中自动检索云遮罩

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Robust and automated cloud discrimination is regarded as an important step toward the extraction and analysis of cloud-free surface features, especially for high-resolution images only covering visible and near-infrared spectrum, like data from the wide view CCD cameras (WVC) of HJ-1 minisatellites. A cloud screening algorithm designed for the HJ-1 (China) multispectral WVC data is presented using a combination of Tasseled Cap (TC) transformation and an unsupervised classification known as the iterative self-organizing data analysis (ISODATA). Two filters, one of which is cluster-based and the other uses a pixel-based analysis that employs greenness index and wetness index both extracted from the TC transformation, are successively driven to filter out cloud-pixels. The performance of the proposed algorithm is investigated for six HJ-1 WVC scenes with typical cloud coverage. Two comparisons, respectively, with one method based on the combination of the TC transformation and linear constrains (TCLC) and the other using the maximum-likelihood classification (MLC), are given in this study. The initial results from both comparisons show an impressive agreement, especially for regions covered by thick clouds or large thin clouds. Although this agreement decreases significantly for other complex situations, such as the presence of numerous small thin clouds, overall agreements still stay on an acceptable level. A considerable contribution, therefore, can be expected by this method for those high-resolution data with less frequent observations and a narrow spectrum cover.
机译:强大且自动的云判别被认为是提取和分析无云表面特征的重要一步,特别是对于仅覆盖可见光谱和近红外光谱的高分辨率图像,例如来自广角CCD相机(WVC)的数据。 HJ-1小卫星。结合流苏帽(TC)变换和无监督分类(称为迭代自组织数据分析(ISODATA)),提出了一种针对HJ-1(中国)多光谱WVC数据设计的云筛选算法。依次驱动两个滤波器,其中一个基于群集,另一个使用基于像素的分析,该分析采用均从TC转换中提取的绿色指数和湿度指数,以滤除云像素。针对具有典型云覆盖的六个HJ-1 WVC场景,研究了该算法的性能。在这项研究中,分别进行了两种比较,一种是基于TC变换和线性约束(TCLC)相结合的方法,另一种是使用最大似然分类(MLC)。两次比较的初步结果显示出令人印象深刻的一致,尤其是对于厚云或大薄云覆盖的区域。尽管对于其他复杂情况(例如,存在许多小薄云),此协议会大大降低,但总体协议仍保持在可接受的水平。因此,通过这种方法,对于那些观测频率较低,光谱覆盖范围较窄的高分辨率数据,可以期望做出巨大贡献。

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