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Sub-pixel mapping of rural land cover objects from fine spatial resolution satellite sensor imagery using super-resolution pixel-swapping

机译:使用超分辨率像素交换的精细空间分辨率卫星传感器图像中的农村土地覆盖物的亚像素映射

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摘要

Mapping rural land cover features, such as trees and hedgerows, for ecological applications is a desirable component of the creation of cartographic maps by the Ordnance Survey. Based on the phenomenon of spatial dependence, sub-pixel mapping can provide increased mapping accuracy of such features. A simple pixel-swapping algorithm for sub-pixel mapping was applied to soft classified fine spatial resolution remotely sensed imagery. Initially, Quickbird™ satellite sensor imagery with a spatial resolution of 2.6 m was acquired of the Christchurch area of Dorset, UK, and three field sites chosen. The imagery was soft classified using a supervised fuzzy c-means algorithm and then super-resolved into sub-pixels using a zoom factor of five. Sub-pixels within pixels were then iteratively swapped until the spatial correlation between sub-pixels for the entire image was maximized. Mathematical morphology was used to suppress error in the super-resolved output, increasing overall accuracy. Field data, including detailed information on the features apparent in the field sites, were used to assess the accuracy of the resultant image. Overall RMSE was between 20 and 30%, resulting in the sub-pixel mapping method producing reasonably accurate results overall of between 50 and 75%. Visual inspection of the super-resolved output shows that the prediction of the position and dimensions of hedgerows was comparable with the original imagery.
机译:在军械测量局制图的过程中,为生态应用绘制农村土地覆盖特征(如树木和树篱)的地图是一个理想的组成部分。基于空间依赖性的现象,子像素映射可以提供这种特征的提高的映射精度。一种用于子像素映射的简单像素交换算法被应用于软分类的精细空间分辨率遥感影像。最初,在英国多塞特郡的基督城地区获得了空间分辨率为2.6 m的Quickbird™卫星传感器图像,并选择了三个野外站点。使用监督的模糊c均值算法对图像进行软分类,然后使用5的缩放因子将图像超分辨为子像素。然后迭代交换像素内的子像素,直到整个图像的子像素之间的空间相关性最大化为止。数学形态学被用来抑制超分辨输出中的误差,从而提高了整体精度。野外数据,包括有关野外站点明显特征的详细信息,被用于评估所得图像的准确性。总体RMSE在20%到30%之间,导致子像素映射方法产生的合理准确的结果总体在50%到75%之间。对超分辨输出的视觉检查显示,对树篱的位置和尺寸的预测与原始图像相当。

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