基于各向异性空间依赖模型的亚像元/像元空间吸引模型遥感影像亚像元映射

C. Zhao, Huaijuan Yang, Hai-feng Zhu, Yiming Yan
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引用次数: 1

摘要

基于亚像元/像素空间吸引模型(SPSAM)的亚像元映射(SPM)是一种提高遥感图像空间分辨率的技术。基于spsam的SPM基于空间依赖理论和各向同性假设。在SPSAM中,空间相关性的权重计算只与子像素与其相邻像素之间的距离有关。显然,空间依赖的方向被忽略了。本文提出了一种基于spsam的各向异性空间依赖模型(SPSAMA)。利用Sobel算子确定粗比例图像在每个像素上的梯度大小和方向。然后利用梯度大小和方向来计算邻域内相邻像素比例的权重。实验结果表明,与传统的SPSAM相比,SPSAMA能够以更高的精度生成土地覆被图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sub-pixel mapping of remote sensing images based on sub-pixel/pixel spatial attraction models with anisotropic spatial dependence model
Sub-pixel mapping (SPM) based on the Sub-pixel /Pixel Spatial Attraction Models (SPSAM) is a technique that improve the spatial resolution of remote sensing images. SPSAM-based SPM is based on the spatial dependence theory with isotropic assumption. In SPSAM, the weight calculation of spatial dependence is only relevant with the distance between the sub-pixel and its neighboring pixel. Obviously, the direction of spatial dependence is neglected. In this paper, a revised SPSAM-based SPM with anisotropic spatial dependence model (SPSAMA) is proposed. Sobel operator is utilized to determine the gradient magnitude and direction of coarse proportion image at every pixel. Then the gradient magnitude and direction will be used to reckon the weights of adjacent pixels proportions in the neighborhood. Experimental results demonstrated that the SPSAMA can produce land cover maps with greater accuracy than traditional SPSAM.
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