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Material identification on martian hyperspectral images using bayesian source separation

机译:Martian Hyperspectral图像的材料识别使用贝叶斯源分离

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Identification of materials in a planetological scene observed by an imaging spectrometer is a common problem in remote sensing. Usually the pixel size is larger than the typical size of material change over planets, leading to a linear spatial mixing. We propose here an unsupervised approach based on source separation methods to estimate the pure spectra of the components present in the observed scene and their abundances in each pixel. Previous studies have shown that this approach is interesting for Martian ices [1]. This method assumes the positivity of both the pure spectra and the mixing coefficients. We propose here to apply this technique to detect Martian minerals and we show that adding the sum-to-one constraint (or additivity constraint) on the abundance vectors allows one to improve the estimation performance.
机译:由成像光谱仪观察到的地图的识别材料是遥感中的常见问题。通常像素尺寸大于行星上的材料变化的典型尺寸,导致线性空间混合。我们在这里提出了一种基于源分离方法的无监督方法,以估计观察到的场景中存在的组件的纯光谱及其在每个像素中的丰富。以前的研究表明,这种方法对火星迪斯有趣[1]。该方法假设纯光谱和混合系数的正极性。我们在此提出应用这种技术来检测火星矿物质,并且我们表明在丰度向量上添加了一个关于一个约束(或添加量约束)允许人们提高估计性能。

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