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A parallel unmixing algorithm for hyperspectral images

机译:高光谱图像的平行解密算法

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We present a new algorithm for feature extraction in hyperspectral images based on source separation and parallel computing. In source separation, given a linear mixture of sources, the goal is to recover the components by producing an unmixing matrix. In hyperspectral imagery, the mixing transform and the separated components can be associated with endmembers and their abundances. Source separation based methods have been employed for target detection and classification of hyperspeclral images. However, these methods usually involve restrictive conditions on the nature of the results such as orthogonality (in Principal Component Analysis -PCA and Orthogonal Subspace Projection -OSP) of the endmembers or statistical independence (in Independent Component Analysis -ICA) of the abundances nor do they fully satisfy all the conditions included in the Linear Mixing Model. Compared to this, our approach is based on the Nonnegative Matrix Factorization (NMF), a less constraining unmixing method. NMF has the advantage of producing positively defined data, and, with several modifications that we introduce also ensures addition to one. The endmember vectors and the abundances are obtained through a gradient based optimization approach. The algorithm is further modified to run in a parallel environment. The parallel NMF (P-NMF) significantly reduces the time complexity and is shown to also easily port to a distributed environment. Experiments with in-house and Hydice data suggest that NMF outperforms ICA, PCA and OSP for unsupervised endmember extraction. Coupled with its parallel implementation, the new method provides an efficient way for unsupervised unmixing further supporting our efforts in the development of a real time hyperspectral sensing environment with applications to industry and life sciences.
机译:我们基于源分离和并行计算的高光谱图像中的特征提取算法。在源分离中,给定源的线性混合,目标是通过产生解密矩阵来回收组分。在高光谱图像中,混合变换和分离的组分可以与终点和其丰度相关。基于源分离的方法已经用于瞄准检测和对高雾图像的分类。然而,这些方法通常涉及对终端(主成分分析-PCA和正交子空间投影 - 多个)的统计独立性(在独立组分分析 - CICA)的结果的限制条件,或者统计独立性也不是它们完全满足了线性混合模型中包括的所有条件。与此相比,我们的方法基于非负矩阵分解(NMF),是一个较少约束的解密方法。 NMF具有产生积极定义数据的优点,并且具有多种修改,我们介绍也确保添加到一个。通过基于梯度的优化方法获得终点向量和丰度。该算法进一步修改以在并行环境中运行。并行NMF(P-NMF)显着降低了时间复杂性,并且显示器也可以轻松地端口到分布式环境。内部内部的实验和水平数据表明,NMF优于ICA,PCA和OSP,无监督的终止的提取。再加上其并行实施,新方法为无监督的解密提供了一种有效的方法,进一步支持我们在与工业和生命科学应用中的实时高光谱传感环境开发的努力。

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