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Segmenting clouds from space: a hybrid multispectral classification algorithm for satellite imagery

机译:从空间分割云:卫星图像混合多光谱分类算法

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This paper reports on a novel approach to atmospheric cloud segmentation from a space based multi-spectral pushbroom satellite system. The satellite collects 15 spectral bands ranging from visible, 0.45 um, to long wave infa-red (IR), 10.7um. The images are radiometrically calibrated and have ground sample distances (GSD) of 5 meters for visible to very near IR bands and a GSD of 20 meters for near IR to long wave IR. The algorithm consists of a hybrid-classification system in the sense that supervised and unsupervised networks are used in conjunction. For performance evaluation, a series of numerical comparisons to human derived cloud borders were performed. A set of 33 scenes were selected to represent various climate zones with different land cover from around the world. The algorithm consisted of the following. Band separation was performed to find the band combinations which form significant separation between cloud and background classes. The potential bands are fed into a K-Means clustering algorithm in order to identify areas in the image which have similar centroids. Each cluster is then compared to the cloud and background prototypes using the Jeffries-Matusita distance. A minimum distance is found and each unknown cluster is assigned to their appropriate prototype. A classification rate of 88% was found when using one short wave IR band and one mid-wave IR band. Past investigators have reported segmentation accuracies ranging from 67% to 80%, many of which require human intervention. A sensitivity of 75% and specificity of 90% were reported as well.
机译:本文报告了一种基于空间的多光谱推性卫星系统的大气云分段的新方法。卫星收集来自可见光,0.45μm,长波INFA-RED(IR),10.7um的35个光谱带。图像是放射性校准的,并且具有5米的接地样本距离(GSD),用于非常接近IR带的可见和20米的GSD,用于近IR到长波IR。该算法包括一个混合分类系统,即监督和无监督的网络结合使用。对于绩效评估,进行了对人类衍生云边界的一系列数值比较。选择了一组33个场景,以代表来自世界各地的不同陆地覆盖的各种气候区。算法包括以下内容。进行频带分离以找到在云和背景类别之间形成显着分离的频带组合。潜在频带被馈送到K-Means聚类算法中,以识别具有类似质心的图像中的区域。然后将每个集群与使用Jeffries-Matusita距离进行比较到云和后台原型。找到最小距离,并且每个未知群集被分配给它们适当的原型。使用一个短波IR频带和一个中频IR带时发现了88%的分类率。过去的调查人员报告的分割精度范围从67%到80%,其中许多需要人为干预。还报告了75%和90%特异性的敏感性。

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