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Cloud and Snow Discrimination for CCD Images of HJ-1A/B Constellation Based on Spectral Signature and Spatio-Temporal Context

机译:基于光谱签名和时空背景的HJ-1A / B星座CCD图像云雪判别

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It is highly desirable to accurately detect the clouds in satellite images before any kind of applications. However, clouds and snow discrimination in remote sensing images is a challenging task because of their similar spectral signature. The shortwave infrared (SWIR, e.g., Landsat TM 1.55–1.75 μm band) band is widely used for the separation of cloud and snow. However, for some sensors such as the CBERS-2 (China-Brazil Earth Resources Satellite), CBERS-4 and HJ-1A/B (HuanJing (HJ), which means environment in Chinese) that are designed without SWIR band, such methods are no longer practical. In this paper, a new practical method was proposed to discriminate clouds from snow through combining the spectral reflectance with the spatio-temporal contextual information. Taking the Mt. Gongga region, where there is frequent clouds and snow cover, in China as a case area, the detailed methodology was introduced on how to use the 181 scenes of HJ-1A/B CCD images in the year 2011 to discriminate clouds and snow in these images. Visual inspection revealed that clouds and snow pixels can be accurately separated by the proposed method. The pixel-level quantitative accuracy validation was conducted by comparing the detection results with the reference cloud masks generated by a random-tile validation scheme. The pixel-level validation results showed that the coefficient of determination (R 2 ) between the reference cloud masks and the detection results was 0.95, and the average overall accuracy, precision and recall for clouds were 91.32%, 85.33% and 81.82%, respectively. The experimental results confirmed that the proposed method was effective at providing reasonable cloud mask for the SWIR-lacking HJ-1A/B CCD images. Since HJ-1A/B have been in orbit for over seven years and these satellites still run well, the proposed method is helpful for the cloud mask generation of the historical archive HJ-1A/B images and even similar sensors.
机译:在任何类型的应用之前,非常需要准确地检测卫星图像中的云。但是,由于遥感图像中的云层和雪层具有相似的光谱特征,因此具有挑战性。短波红外波段(SWIR,例如Landsat TM 1.55-1.75μm波段)广泛用于云和雪的分离。但是,对于某些没有SWIR频段设计的传感器,例如CBERS-2(中国-巴西地球资源卫星),CBERS-4和HJ-1A / B(HuanJing,中文意思是环境),这种方法不再实用。本文提出了一种新的实用方法,通过将光谱反射率与时空上下文信息相结合来从雪中区分云。以山。以中国云雾较多的贡嘎地区为例,介绍了如何利用2011年HJ-1A / B CCD图像的181个场景来识别云雾和雪景的详细方法。图片。目视检查表明,通过所提出的方法可以准确地分离云和雪像素。通过将检测结果与由随机平铺验证方案生成的参考云掩模进行比较,进行了像素级定量精度验证。像素级验证结果表明,参考云掩模与检测结果之间的确定系数(R 2)为0.95,云的平均总体准确度,准确性和召回率分别为91.32%,85.33%和81.82% 。实验结果证明,该方法可以有效地为缺乏SWIR的HJ-1A / B CCD图像提供合理的云遮罩。由于HJ-1A / B在轨道上运行了七年以上,而且这些卫星仍运行良好,因此该方法有助于生成历史档案HJ-1A / B图像甚至类似传感器的云掩模。

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