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Enhanced Self-Training Superresolution Mapping Technique for Hyperspectral Imagery

机译:高光谱图像的增强自训练超分辨率映射技术

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摘要

An efficient superresolution technique through spatial–spectral data fusion for hyperspectral (HS) imagery is proposed in this letter. The spatial and spectral contents of an HS image are extracted using a linear mixture model and a fully constrained least squares unmixing technique. These data are then combined using a spatial correlation model through a learning-based superresolution mapping (SRM) algorithm. The proposed spatial correlation model realistically simulates a mapping model between the low-resolution (LR) HS image and its subsampled version ( $hbox{LR}^{2}$ HS image) to train the designed SRM algorithm for mapping from the LR to high resolution. The experiments on real HS images validate the accuracy and low complexity of the proposed autonomous technique for key information detection in HS imagery.
机译:在这封信中,提出了一种通过空间光谱数据融合实现高光谱(HS)图像的有效超分辨率技术。使用线性混合模型和完全约束的最小二乘分解技术提取HS图像的空间和光谱内容。然后,通过基于学习的超分辨率映射(SRM)算法,使用空间相关模型来组合这些数据。拟议的空间相关性模型实际上模拟了低分辨率(LR)HS图像与其子采样版本之间的映射模型( $ hbox {LR} ^ {2} $ HS图像)来训练设计的SRM算法,以便从LR映射到高分辨率。在真实HS图像上进行的实验验证了所提出的用于HS图像关键信息检测的自主技术的准确性和低复杂度。

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