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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing. >Multiobjective Subpixel Mapping With Multiple Shifted Hyperspectral Images
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Multiobjective Subpixel Mapping With Multiple Shifted Hyperspectral Images

机译:具有多个移位高光谱图像的多目标子像素映射

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摘要

Subpixel mapping (SPM) is a useful technique that can interpret the spatial distribution inside mixed pixels and produce a finer-resolution classification map for hyperspectral remote-sensing imagery. However, SPM is essentially an ill-posed problem that requires additional information to produce the unique solution. The limited information of a single image is insufficient to make the mapping problem well posed, whereas the complementary spatial information of multiple shifted images is able to reduce the uncertainty and generate an accurate map. The maximum $a$ posteriori model is a feasible way to incorporate auxiliary information for SPM with multiple shifted images, but it introduces a sensitive regularization parameter, which is difficult to preset. Furthermore, the fixed parameter in the iterations influences the incorporation of the multiple images and the spatial prior. In this article, to address these issues, a multiobjective SPM framework for use with multiple shifted hyperspectral images (MOMSM) is proposed. In the proposed algorithm, a multiobjective model consisting of two objective functions, i.e., data fidelity and spatial prior terms, is constructed to transform the SPM into a multiobjective optimization problem, to get rid of the sensitive regularization parameter. To simultaneously optimize the two objective functions, a multiobjective memetic algorithm with a local search operator and an adaptive global replacement strategy is proposed. The multiple images and spatial information can be dynamically fused and the optimal mapping solution with a good balance between the two objectives can be finally obtained. Experiments conducted on both synthetic and real data sets confirm that the proposed method outperforms the other tested SPM algorithms.
机译:子像素映射(SPM)是一种有用的技术,可以解释混合像素内的空间分布,并为高光谱遥感图像产生更精细分辨率的分类映射。然而,SPM基本上是一个不良问题,需要额外的信息来产生唯一的解决方案。单个图像的有限信息不足以使映射问题良好呈现,而多个移位图像的互补空间信息能够减少不确定性并产生准确的图。最大值<内联公式XMLNS:MML =“http://www.w3.org/1998/math/mathml”xmlns:xlink =“http://www.w3.org/1999/xlink”> $ a $ <斜体XMLNS:MML =“http://www.w3.org/1998/math/mathml”xmlns:xlink =“http://www.w3.org/1999/xlink”> postiori 模型是一种可行的方式,可以使用多个移位图像合并SPM的辅助信息,但它引入了一个敏感的正则化参数,这很难预设。此外,迭代中的固定参数影响多个图像和空间的结合。在本文中,为了解决这些问题,提出了一种与多移位高光谱图像(MOMSM)一起使用的多目标SPM框架。在所提出的算法中,构造了由两个目标函数,即数据保真度和空间的术语组成的多目标模型以将SPM转换为多目标优化问题,以摆脱敏感的正则化参数。为了同时优化两个目标函数,提出了一种具有本地搜索操作员和自适应全局替换策略的多目标膜算法。可以最终获得多个图像和空间信息可以动态融合,并且可以最终获得具有良好平衡的最佳映射解决方案。在合成和实数据集上进行的实验证实了所提出的方法优于其他测试的SPM算法。

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