航空高光谱图像中三维物体的材料分类

D. Slater, G. Healey
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引用次数: 27

摘要

从航空图像中自动分类材料是目标识别和地理空间数据库构建等许多应用的重要能力。高光谱图像为此目的提供了丰富的信息来源,但由于环境条件和场景几何形状导致材料观察到的光谱特征的可变性,使用起来很复杂。在本文中,我们提出了一种方法,该方法使用从未知条件下的材料测量的单一光谱辐射函数来合成一套全面的辐射光谱,该光谱对应于该材料在各种条件下的辐射光谱。这组辐射光谱可用于建立高光谱子空间表示,可用于在各种情况下的材料识别。我们使用在德克萨斯州胡德堡获得的HYDICE图像来演示这些算法在模型合成和材料映射中的应用。该方法正确地绘制了几种类型的屋顶材料、道路和植被,这些植被由于表面方向的变化而发生了显著的光谱变化。我们表明,该方法优于基于直接光谱比较的方法。
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Material classification for 3D objects in aerial hyperspectral images
Automated material classification from airborne imagery is an important capability for many applications including target recognition and geospatial database construction. Hyperspectral imagery provides a rich source of information for this purpose but utilization is complicated by the variability in a material's observed spectral signature due to the ambient conditions and the scene geometry. In this paper, we present a method that uses a single spectral radiance function measured from a material under unknown conditions to synthesize a comprehensive set of radiance spectra that corresponds to that material over a wide range of conditions. This set of radiance spectra can be used to build a hyperspectral subspace representation that can be used for material identification over a wide range of circumstances. We demonstrate the use of these algorithms for model synthesis and material mapping using HYDICE imagery acquired at Fort Hood, Texas. The method correctly maps several classes of roofing materials, roads, and vegetation over significant spectral changes due to variation in surface orientation. We show that the approach outperforms methods based on direct spectral comparison.
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