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A NOVEL HIGHLY PARALLEL ALGORITHM FOR LINEARLY UNMIXING HYPERSPECTRAL IMAGES

机译:线性不混合超光谱图像的新型高度并行算法

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Endmember extraction and abundances calculation represent critical steps within the process of linearly unmixing a given hyperspectral image because of two main reasons. The first one is due to the need of computing a set of accurate endmembers in order to further obtain confident abundance maps. The second one refers to the huge amount of operations involved in these time-consuming processes. This work proposes an algorithm to estimate the endmembers of a hyperspectral image under analysis and its abundances at the same time. The main advantage of this algorithm is its high parallelization degree and the mathematical simplicity of the operations implemented. This algorithm estimates the endmembers as virtual pixels. In particular, the proposed algorithm performs the descent gradient method to iteratively refine the endmembers and the abundances, reducing the mean square error, according with the linear unmixing model. Some mathematical restrictions must be added so the method converges in a unique and realistic solution. According with the algorithm nature, these restrictions can be easily implemented. The results obtained with synthetic images demonstrate the well behavior of the algorithm proposed. Moreover, the results obtained with the well-known Cuprite dataset also corroborate the benefits of our proposal.
机译:由于两个主要原因,端元提取和丰度计算代表了线性分解给定高光谱图像过程中的关键步骤。第一个是由于需要计算一组准确的端成员,以便进一步获得可信的丰度图。第二篇文章涉及这些耗时的过程中涉及的大量操作。这项工作提出了一种算法,可以同时估计待分析的高光谱图像的末端成员及其丰度。该算法的主要优点是并行度高,实现的运算在数学上简单。该算法将端成员估计为虚拟像素。特别是,根据线性分解模型,所提出的算法执行下降梯度方法来迭代精炼末端成员和丰度,从而降低均方误差。必须添加一些数学限制,以使该方法收敛于唯一且切合实际的解决方案。根据算法的性质,可以很容易地实现这些限制。用合成图像获得的结果证明了所提出算法的良好性能。此外,使用著名的Cuprite数据集获得的结果也证实了我们建议的好处。

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