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Supervised target detection in hyperspectral images using one-class Fukunaga-Koontz Transform

机译:使用一类Fukunaga-Koontz变换在高光谱图像中进行有监督的目标检测

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A novel hyperspectral target detection technique based on Fukunaga-Koontz transform (FKT) is presented. FKT offers significant properties for feature selection and ordering. However, it can only be used to solve multi-pattern classification problems. Target detection may be considered as a two-class classification problem, i.e., target versus background clutter. Nevertheless, background clutter typically contains different types of materials. That's why; target detection techniques are different than classification methods by way of modeling clutter. To avoid the modeling of the background clutter, we have improved one-class FKT (OC-FKT) for target detection. The statistical properties of target training samples are used to define tunnel-like boundary of the target class. Non-target samples are then created synthetically as to be outside of the boundary. Thus, only limited target samples become adequate for training of FKT. The hyperspectral image experiments confirm that the proposed OC-FKT technique provides an effective means for target detection.
机译:提出了一种基于Fukunaga-Koontz变换(FKT)的高光谱目标检测技术。 FKT为功能选择和订购提供了重要的属性。但是,它只能用于解决多模式分类问题。目标检测可以被认为是两类分类问题,即目标与背景混乱。但是,背景杂波通常包含不同类型的材料。这就是为什么;目标检测技术与通过建模杂波的分类方法不同。为避免建模背景混乱,我们改进了用于目标检测的一类FKT(OC-FKT)。目标训练样本的统计属性用于定义目标类别的类隧道边界。然后,将非目标样本合成为位于边界之外。因此,只有有限的目标样本才足以训练FKT。高光谱图像实验证实了所提出的OC-FKT技术为目标检测提供了有效的手段。

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