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Adaptive non-local Euclidean medians sparse unmixing for hyperspectral imagery

机译:高光谱影像的自适应非局部欧氏中值稀疏分解

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摘要

Sparse unmixing models based on sparse representation theory and a sparse regression model have been successfully applied to hyperspectral remote sensing image unmixing. To better utilize the abundant spatial information and improve the unmixing accuracy, spatial sparse unmixing methods such as the non-local sparse unmixing (NLSU) approach have been proposed. Although the NLSU method utilizes non-local spatial information as the spatial regularization term and obtains a satisfactory unmixing accuracy, the final abundances are affected by the non-local neighborhoods and drift away from the true abundance values when the observed hyperspectral images have high noise levels. Furthermore, NLSU contains two regularization parameters which need to be appropriately set in real applications, which is a difficult task and often has a high computational cost. To solve these problems, an adaptive non-local Euclidean medians sparse unmixing (ANLEMSU) method is proposed to improve NLSU by replacing the non-local means total variation spatial consideration with the non-local Euclidean medians filtering approach. In addition, ANLEMSU utilizes a joint maximum a posteriori (JMAP) strategy to acquire the relationships between the regularization parameters and the estimated abundances, and achieves the fractional abundances adaptively, without the need to set the two regularization parameters manually. The experimental results using both simulated data and real hyperspectral images indicate that ANLEMSU outperforms the previous sparse unmixing algorithms and, hence, provides an effective option for the unmixing of hyperspectral remote sensing imagery.
机译:基于稀疏表示理论的稀疏分解模型和稀疏回归模型已成功应用于高光谱遥感图像分解。为了更好地利用丰富的空间信息并提高解混精度,提出了空间稀疏解混方法,如非局部稀疏解混(NLSU)方法。尽管NLSU方法利用非局部空间信息作为空间正则化项并获得令人满意的分解精度,但是当观察到的高光谱图像具有高噪声水平时,最终的丰度会受到非本地邻域的影响,并偏离真实的丰度值。此外,NLSU包含两个正则化参数,需要在实际应用中对其进行适当设置,这是一项艰巨的任务,并且通常具有很高的计算成本。为了解决这些问题,提出了一种自适应的非局部欧氏中值稀疏混合(ANLEMSU)方法,通过用非局部欧氏中值滤波方法代替非局部均值总变化空间考虑来改善NLSU。此外,ANLEMSU利用联合最大后验(JMAP)策略获取正则化参数与估计的丰度之间的关系,并自适应地实现分数丰度,而无需手动设置两个正则化参数。使用模拟数据和实际高光谱图像的实验结果表明,ANLEMSU优于以前的稀疏分解算法,因此为高光谱遥感图像的分解提供了有效的选择。

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