Detection of underwater objects in hyperspectral imagery

D. Gillis
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引用次数: 1

Abstract

One of the biggest challenges in detecting underwater objects in hyperspectral imagery is that, unlike the land-based case, the observed spectrum of an underwater target is highly dependent on the properties of the surrounding water, as well as the depth of the target. In this paper we present a very general framework for underwater detection. The framework uses physics-based models to create a target space — the set of all observed spectra that a given target could generate for a given image. We then exploit the geometrical structure that is present in the target space to perform a nonlinear dimensionality reduction that greatly simplifies the detection problem. We also illustrate the framework with examples that use simulated targets at various depths.
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高光谱图像中水下目标的检测
在高光谱图像中探测水下目标的最大挑战之一是,与陆基情况不同,水下目标的观测光谱高度依赖于周围水的性质以及目标的深度。在本文中,我们提出了一个非常通用的水下探测框架。该框架使用基于物理的模型来创建目标空间——给定目标可以为给定图像生成的所有观测光谱的集合。然后,我们利用目标空间中存在的几何结构来执行非线性降维,从而大大简化了检测问题。我们还通过在不同深度使用模拟目标的示例来说明该框架。
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