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Parallel Implementation of Linear and Nonlinear Spectral Unmixing of Remotely Sensed Hyperspectral Images

机译:远程感测高光谱图像的线性和非线性光谱解混的平行实现

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Hyperspectral unmixing is a very important task for remotely sensed hyperspectral data exploitation. It addresses the (possibly) mixed nature of pixels collected by instruments for Earth observation, which are due to several phenomena including limited spatial resolution, presence of mixing effects at different scales, etc. Spectral unmixing involves the separation of a mixed pixel spectrum into its pure component spectra (called endmembers) and the estimation of the proportion (abundance) of endmember in the pixel. Two models have been widely used in the literature in order to address the mixture problem in hyperspectral data. The linear model assumes that the endmember substances are sitting side-by-side within the field of view of the imaging instrument. On the other hand, the nonlinear mixture model assumes nonlinear interactions between endmember substances. Both techniques can be computationally expensive, in particular, for high-dimensional hyperspectral data sets. In this paper, we develop and compare parallel implementations of linear and nonlinear unmixing techniques for remotely sensed hyperspectral data. For the linear model, we adopt a parallel unsupervised processing chain made up of two steps: i) identification of pure spectral materials or endmembers, and ii) estimation of the abundance of each endmember in each pixel of the scene. For the nonlinear model, we adopt a supervised procedure based on the training of a parallel multi-layer perceptron neural network using intelligently selected training samples also derived in parallel fashion. The compared techniques are experimentally validated using hyperspectral data collected at different altitudes over a so-called Dehesa (semi-arid environment) in Extremadura, Spain, and evaluated in terms of computational performance using high performance computing systems such as commodity Beowulf clusters.
机译:Hyperspectral unmixing是远程感测的高光谱数据剥削的一个非常重要的任务。它解决了由地球观察仪器收集的(可能)的像素的混合性质,这是由于包括有限的空间分辨率存在的现象,不同尺度的混合效果等。光谱解密涉及将混合像素谱分离成其纯成分光谱(称为endmembers)和估计像素中的端部的比例(丰度)。在文献中广泛使用了两种模型,以解决高光谱数据中的混合问题。线性模型假设结束物质在成像仪器的视野中坐在旁边。另一方面,非线性混合模型假设末端物质之间的非线性相互作用。这两种技术都可以计算得昂贵,特别是对于高维超细数据集。在本文中,我们开发并比较了线性和非线性解密技术的并行实现,用于远程感测的高光谱数据。对于线性模型,我们采用了一个平行无监督的处理链,由两个步骤组成:i)识别纯谱材料或endmemers,并且II)在场景的每个像素中估计每个端部的丰富。对于非线性模型,我们采用了一种基于训练的监督程序,使用智能选择的训练样本来训练并行时尚也得到了智能选择的训练样本。使用在Semberadura,Specain的所谓的DISHEA(半干旱环境)的不同高度在不同海拔高光谱数据上进行实验验证的比较技术,并在使用商品Beowulf集群等高性能计算系统的计算性能方面进行评估。

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