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Spectral image complexity estimated through local convex hull volume

机译:通过局部凸壳体积估计的光谱图像复杂度

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Most spectral image processing schemes develop models of the data in the hyperspace by using first and second order statistics or linear subspace geometries applied to the image globally. However, it is simple to show that the data are typically not multivariate Gaussian or are not well defined by linear geometries when considering the entire image, particularly as the spatial resolution improves and the scene becomes more cluttered. Here, we use the concept of a convex hull that encloses the data to rank local regions within an image by an estimate of their complexity. The complexity as defined here is directly related to the volume of the hull in n dimensions that encloses the data under the assumptions that less complex data will have fewer distinct materials and more complex data will have more materials. They will also be more widely separated in the hyperspace. The method uses the Gram Matrix approach to estimate the volume of the hull and is applied to an image that has been tiled. The complexity of each tile is then estimated showing the relative changes in complexity over a large area spectral image. Results will be shown for reflective hyperspectral imagery over different scene contents with resolutions of ≈2–3 m. Ultimately this methodology can be used to develop localized models of an image and may provide insight into the large area search problem.
机译:大多数频谱图像处理方案通过使用应用于全局图像的第一和二阶统计或线性子空间几何形状,在近距离空间中开发数据模型。然而,简单地表明数据通常不是多变量高斯,或者在考虑整个图像时,线性几何形状不充分限制,特别是随着空间分辨率改善并且场景变得更加杂乱。在这里,我们使用凸船的概念,该概念包含数据以通过对其复杂性的估计来排序图像内的本地区域。这里定义的复杂性与N维中的船体的体积直接相关,该船体在封闭数据下的数据下的数据较少的假设,这些数据较少的数据将具有更少的不同材料,更复杂的数据将具有更多的材料。它们也将在高度空间中更广泛分开。该方法使用克矩阵方法来估计船体的音量,并应用于已平铺的图像。然后估计每个瓦片的复杂性,示出了在大面积光谱图像上的复杂性的相对变化。结果将显示在不同场景内容上的反射高光谱图像,具有≈2-3m的分辨率。最终,这种方法可用于开发图像的本地化模型,并且可以提供对大面积搜索问题的洞察力。

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