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Hyperspectral unmixing via projected mini-batch gradient descent

机译:通过预计的小批量梯度下降进行高光谱解混

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摘要

The minimization problem of reconstruction error over large hyperspectral image data is one of the most important problems in unsupervised hyperspectral unmixing. A variety of algorithms based on nonnegative matrix factorization (NMF) have been proposed in the literature to solve this minimization problem. One popular optimization method for NMF is the projected gradient descent (PGD). However, as the algorithm must compute the full gradient on the entire dataset at every iteration, the PGD suffers from high computational cost in the large-scale real hyperspectral image. In this paper, we try to alleviate this problem by introducing a mini-batch gradient descent based algorithm, which has been widely used in large-scale machine learning. In our method, the endmember can be updated pixel set by pixel set while abundance can be updated band set by band set. Thus, the computational cost is lowered to a certain extent. The performance of the proposed algorithm is quantified in the experiment on synthetic and real data.
机译:大型高光谱图像数据上的重构误差最小化问题是无监督高光谱解混中最重要的问题之一。在文献中已经提出了多种基于非负矩阵分解(NMF)的算法来解决该最小化问题。 NMF的一种流行的优化方法是投影梯度下降(PGD)。但是,由于该算法必须在每次迭代时都在整个数据集上计算整个梯度,因此PGD在大规模实际高光谱图像中会遭受较高的计算成本。在本文中,我们尝试通过引入一种基于小批量梯度下降的算法来缓解此问题,该算法已在大规模机器学习中得到广泛使用。在我们的方法中,端成员可以按像素集更新像素集,而丰度可以按波段集更新波段集。因此,计算成本在一定程度上降低了。在合成和真实数据的实验中,对所提出算法的性能进行了量化。

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