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Schrodinger Eigenmaps for Spectral Target Detection

机译:薛定E特征图谱用于光谱目标检测

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摘要

Spectral imagery such as multispectral and hyperspectral data could be seen as a set of panchromatic images stacked as a 3d cube, with two spatial dimensions and one spectral. For hyperspectral imagery, the spectral dimension is highly sampled, which implies redundant information and a high spectral dimensionality. Therefore, it is necessary to use transformations on the data not only to reduce processing costs, but also to reveal some features or characteristics of the data that were hidden in the original space. Schrodinger Eigenmaps (SE) is a novel mathematical method for non-linear representation of a data set that attempts to preserve the local structure while the spectral dimension is reduced. SE could be seen as an extension of Laplacian Eigenmaps (LE), where the diffusion process could be steered in certain directions determined by a potential term. SE was initially introduced as a semi supervised classification technique and most recently, it has been applied to target detection showing promising performance. In target detection, only the barrier potential has been used, so different forms to define barrier potentials and its influence on the data embedding are studied here. In this way, an experiment to assess the target detection vs. how strong the influence of potentials is and how many eigenmaps are used in the detection, is proposed. The target detection is performed using a hyperspectral data set, where several targets with different complexity are presented in the same scene.
机译:诸如多光谱和高光谱数据之类的光谱图像可以看作是一组堆叠为3d立方体的全色图像,具有两个空间尺寸和一个光谱。对于高光谱图像,光谱维被高度采样,这意味着冗余信息和高光谱维。因此,有必要对数据进行转换,不仅可以降低处理成本,而且还可以揭示原始空间中隐藏的某些数据特征。 Schrodinger Eigenmaps(SE)是一种用于数据集非线性表示的新颖数学方法,该方法试图在减小光谱维数的同时保留局部结构。 SE可以看作是Laplacian特征图谱(LE)的扩展,其中扩散过程可以在由潜在项确定的某些方向上进行控制。 SE最初是作为一种半监督分类技术而引入的,最近,它已被用于具有前景的目标检测。在目标检测中,仅使用了势垒电势,因此这里研究定义势垒电势及其对数据嵌入的影响的不同形式。以此方式,提出了一种评估目标检测与电势影响的强弱以及检测中使用了多少特征图的实验。使用高光谱数据集执行目标检测,其中在同一场景中呈现具有不同复杂度的多个目标。

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