遥感影像空间尺度特性与最佳空间分辨率选择
Spatial Scale of Remote Sensing Image and Selection of Optimal Spatial Resolution
- 2008年第4期 页码:529-537
纸质出版日期: 2008
DOI: 10.11834/jrs.20080470
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纸质出版日期: 2008 ,
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[1]明冬萍,王群,杨建宇.遥感影像空间尺度特性与最佳空间分辨率选择[J].遥感学报,2008(04):529-537.
MING Dong-ping1, WANG Qun1, YANG Jian-yu2. Spatial Scale of Remote Sensing Image and Selection of Optimal Spatial Resolution[J]. Journal of Remote Sensing, 2008,(4):529-537.
尺度概念是理解地球系统复杂性的关键
尺度问题被认为是对地观测的主要挑战之一
而结合具体研究应用领域
由地学现象的尺度本身出发
选择所需遥感影像的最佳尺度和分辨率
是非常有现实意义的。本文在深入剖析了遥感影像的尺度特性和遥感影像尺度选择的意义的基础上
探讨了基于地统计学方法定量选择遥感影像最佳空间分辨率的方法。阐明了传统局部方差方法不能得到理想结果的原因:传统的局部方差方法的实质是基于变化地面面积计算影像局部方差的均值
而基于这样不同甚至是相差悬殊的地面面积进行局部方差计算
其结果必然不具有可比性。对此
本文提出了基于可变窗口与可变分辨率的改进局部方差方法
即依次降低空间分辨率时
高分辨率采用大窗口尺寸
低分辨率采用小窗口尺寸来维持计算窗口内的地面面积的一致
由此计算出的局部方差作比较来判定遥感影像最佳分辨率。进行了系列实验分析
得到了相关结论
分析得出这种基于地统计的方法来选择遥感影像最佳分辨率的方法
对遥感和G IS研究与地学应用具有一定的理论意义和指导意义。
Scale is a key concept for understanding the complexity of earth system.And it is regarded as one of the main challenges of earth observation.It is crucial to select the optimal spatial resolution of remote sensing image according to its application field and its characteristics.Based on analyzing the scale characteristic of remote sensing images
this paper analyses the scale selection and discusses geo-statistics based method of quantificationally selecting the optimal spatial resolution of remote sensing image.Especially
this paper analyses traditional local variance method and its defects.As for local variance method
it is suggested to measure the relationship between the size of the objects in the scene and spatial resolution
and then calculate the mean value of the standard deviation by passing a n pixel by n pixel moving window for each pixel on successively spatially degraded images
and then takes the mean of all local variances of the successively spatially degraded images as an indication of the spatial elements within the scene of the image
according to which the optimal spatial resolution whose mean local variance is maximum can be estimated.So the traditional local variance method computes the mean of all local variance on the different ground area
which results in that the local variance does not fall substantially with the successively degradation of spatial resolution of the image
consequently the computational results are non-comparable
and the traditional method can not achieve satisfactory result.Breaking through the limitation
this paper proposes the modified local variance method based on variable window sizes and variable resolution to quantitatively select the optimal spatial resolution of remote sensing images
which are high spatial resolution images with large window size and low spatial resolution images with small window size
so that the relevant ground area is kept consistent.The actual process inevitably involves the ideal decimal window size
which is proposed to be computed based on the spatial statistics theory.Consequently
the optimal spatial resolution of remote sensing image can be computed by comparing the modified mean local variance.This paper takes three pieces of IKONOS images which stand for building district
farmland and forest individually as primary experimental image and the modified local variances are computed for the three kinds of landscape individually.The experimental results show that this geo-statistics based method of quantificationally selecting the optimal spatial resolution of remote sensing image has theoretical and instructional meaning: the spatial resolution of 3—5m
3—5m and 1—5m is respectively suitable for landscape of building district
farmland and forest;only the local variance based on variable window size and variable resolution can indicate the actual change of local variance with the degradation of spatial resolution of the image;local variance method adopts proper window size to reflect the change of landscape property
so it can reflect the micro-characters and is suitable for study on the fine scale landscape or the artificial landscape.
遥感影像尺度空间分辨率局部方差
remote sensing imagescalespatial resolutionlocal variance
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