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A Stepwise Analytical Projected Gradient Descent Search for Hyperspectral Unmixing and Its Code Vectorization

机译:高光谱解混的逐步分析投影梯度下降搜索及其代码矢量化

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We present, in this paper, a new methodology for spectral unmixing, where a vector of fractions, corresponding to a set of endmembers (EMs), is estimated for each pixel in the image. The process first provides an initial estimate of the fraction vector, followed by an iterative procedure that converges to an optimal solution. Specifically, projected gradient descent (PGD) optimization is applied to (a variant of) the spectral angle mapper objective function, so as to significantly reduce the estimation error due to amplitude (i.e., magnitude) variations in EM spectra, caused by the illumination change effect. To improve the computational efficiency of our method over a commonly used gradient descent technique, we have analytically derived the objective function's gradient and the optimal step size (used in each iteration). To gain further improvement, we have implemented our unmixing module via code vectorization, where the entire process is “folded” into a single loop, and the fractions for all of the pixels are solved simultaneously. We call this new parallel scheme vectorized code PGD unmixing (VPGDU). VPGDU has the advantage of solving (simultaneously) an independent optimization problem per image pixel, exactly as other pixelwise algorithms, but significantly faster. Its performance was compared with the commonly used fully constrained least squares unmixing (FCLSU), the generalized bilinear model (GBM) method for hyperspectral unmixng, and the fast state-of-the-art methods, sparse unmixing by variable splitting and augmented Lagrangian (SUnSAL) and collaborative SUnSAL (CLSUnSAL) based on the alternating direction method of multipliers. Considering all of the prospective EMs of a scene at each pixel (i.e., without a priori knowledge which/how many EMs are actually present in a given pixel), we demonstrate that the accuracy due to VPGDU is considerably higher than that obtained by FCLSU, GBM, SUnSAL, and CLSUnSAL under varying illumination, and is, otherwise, comparable with respect to these methods. However, while our method is significantly faster than FCLSU and GBM, it is slower than SUnSAL and CLSUnSAL by roughly an order of magnitude.
机译:我们在本文中提出了一种新的光谱混合方法,其中为图像中的每个像素估计了对应于一组末端成员(EM)的分数向量。该过程首先提供分数矢量的初始估计,然后是收敛到最佳解的迭代过程。具体而言,将投影梯度下降(PGD)优化应用于光谱角度映射器目标函数(的一种变化形式),以便显着减少由于照明变化引起的EM光谱中幅度(即幅度)变化引起的估计误差。影响。为了比常用的梯度下降技术提高我们的方法的计算效率,我们已分析得出目标函数的梯度和最佳步长(用于每次迭代)。为了获得进一步的改进,我们通过代码矢量化实现了分解模块,其中整个过程被“折叠”到单个循环中,同时解决了所有像素的分数。我们称这种新的并行方案矢量化代码PGD分解(VPGDU)。 VPGDU的优点是(同时)解决了每个图像像素的独立优化问题,与其他逐像素算法完全一样,但速度明显更快。将其性能与常用的完全约束最小二乘分解(FCLSU),用于高光谱分解的广义双线性模型(GBM)方法,以及最新的快速方法,通过可变分裂和增强拉格朗日稀疏分解( SUnSAL)和基于乘法器交替方向法的协作SUnSAL(CLSUnSAL)。考虑到每个像素处场景的所有预期EM(即,在没有先验知识的情况下,给定像素中实际存在多少个EM),我们证明了VPGDU产生的精度明显高于FCLSU获得的精度, GBM,SUnSAL和CLSUnSAL在变化的光照下使用,在其他方面可与这些方法相比。但是,尽管我们的方法比FCLSU和GBM快得多,但比SUnSAL和CLSUnSAL慢大约一个数量级。

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