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Spectral angle automatic cluster routine (SAALT): an unsupervised multispectral clustering algorithm

机译:光谱角度自动集群例程(Saalt):无监督的多光谱聚类算法

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The Spectral Angle Automatic cLuster rouTine (SAALT) algorithm consists of an iterative spectral angle calculator which seeks to cluster scenes captured with multispectral and hyperspectral imaging instruments. The unique aspect of SAALT is itsability to operate with little or no a priori information about the scene. SAALT has been applied to hyperspectral data that spans the visible and near infrared (IR) and to multispectral data that spans the visible, shortwave IR, and midwave IR. Bothactual and simulated scenes were used in this study. The results demonstrate the capability of SAALT to divide a scene into its natural components, such as water, clouds, grass, trees, and roads. The utility of SAALT described in this paper isdemonstrated with quick and successful differentiation between cloudy and clear pixels during day, night, dawn, and sunset scenes for a hypothetical multispectral remote sensing system.
机译:频谱角度自动集群例程(Saalt)算法包括迭代光谱角度计算器,该计算器寻求使用多光谱和高光谱成像仪器捕获的集群场景。 Saalt的独特方面是有关场景的很少或没有先验的信息,因此可赋予操作。 Saalt已应用于高光谱数据,这些数据跨越可见和近红外(IR)和跨越可见光,短波IR和MIDWAVE IR的多光谱数据。本研究中使用了疾病和模拟场景。结果证明了毛泽地将场景划分为其天然成分,例如水,云,草,树木和道路。本文中描述的苏尔苏尔特在白天,夜晚,黎明和日落场景中的多云和清晰像素之间的快速和成功的差异化,是一个假设的多光谱遥感系统的日落场景。

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