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首页> 外文期刊>Geoscience and Remote Sensing Letters, IEEE >Subpixel Mapping Using Markov Random Field With Multiple Spectral Constraints From Subpixel Shifted Remote Sensing Images
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Subpixel Mapping Using Markov Random Field With Multiple Spectral Constraints From Subpixel Shifted Remote Sensing Images

机译:使用具有多个光谱约束的Markov随机场从子像素移位的遥感图像进行子像素映射

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摘要

Subpixel mapping (SPM) is a promising technique to increase the spatial resolution of land cover maps. Markov random field (MRF)-based SPM has the advantages of considering spatial and spectral constraints simultaneously. In the conventional MRF, only the spectral information of one observed coarse spatial resolution image is utilized, which limits the SPM accuracy. In this letter, supplementary information from subpixel shifted remote sensing images (SSRSI) is used with MRF to produce more accurate SPM results. That is, spectral information from SSRSI is incorporated into the likelihood energy function of MRF to provide multiple spectral constraints. Simulated and real images were tested with the subpixel/pixel spatial attraction model, Hopfield neural networks (HNNs), HNN with SSRSI, image interpolation then hard classification, conventional MRF, and proposed MRF with SSRSI based SPM methods. Results showed that the proposed method can generate the most accurate SPM results among these methods.
机译:亚像素映射(SPM)是一种有前途的技术,可以提高土地覆盖图的空间分辨率。基于马尔可夫随机场(MRF)的SPM具有同时考虑空间和频谱约束的优势。在常规的MRF中,仅利用一个观察到的粗糙空间分辨率图像的光谱信息,这限制了SPM精度。在这封信中,来自子像素移位的遥感图像(SSRSI)的补充信息与MRF一起使用以产生更准确的SPM结果。即,将来自SSRSI的光谱信息合并到MRF的似然能量函数中,以提供多个光谱约束。使用亚像素/像素空间吸引模型,Hopfield神经网络(HNN),具有SSRSI的HNN,图像插值然后进行硬分类,常规MRF和基于SSRSI的SRF方法提出的MRF,对模拟和真实图像进行了测试。结果表明,所提出的方法可以在这些方法中产生最准确的SPM结果。

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