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基于空间统计学的空间数据窗口大小的确定
引用本文:马洪超,李德仁.基于空间统计学的空间数据窗口大小的确定[J].武汉大学学报(信息科学版),2001,26(1):18-23.
作者姓名:马洪超  李德仁
作者单位:武汉大学测绘遥感信息工程国家重点实验室,武汉市珞喻路129号,430079
基金项目:中国博士后基金资助项目(01103);国土资源部矿产资源定量预测与评价实验室开放基金资助项目(2000)。
摘    要:提出基于空间统计学的方法来确定空间数据窗口大小,实例证明是可行的。同时提出了对海底照片成像不均匀光照进行纠正的思路和方法,该方法简单有效,效果较理想。

关 键 词:图像处理  空间数据窗口  空间统计学  不均匀光照  海底近景摄影照片  纠正
文章编号:1000-050X(2001)01-0018-06
修稿时间:2000年9月29日

Geographic Window Fixing and Its Application Based on Spatial Statistics
MA Hongchao,LI Deren.Geographic Window Fixing and Its Application Based on Spatial Statistics[J].Geomatics and Information Science of Wuhan University,2001,26(1):18-23.
Authors:MA Hongchao  LI Deren
Institution:MA Hongchao1 LI Deren1
Abstract:Fixing the size and shape of geographic window is vitally important in geo_spatial data processing, especially in the field of remotely sensed data processing.Conventionally,geographic window (both the size and the shape) will be fixed before the image processing task is carried out and this fixed window will be moved within the whole image while operators such as Sobel filter are being calculated within it.Such is the case commonly encountered in spatial filtering.Though commonly used neighborhood processing operators have their fixed shapes and sizes,and weights in their corresponding position in the window,there is no existing methodology for fixing the geographic window self_adaptedly,that is,determining the shape and size of a window according to the image data themselves,other than arbitrarily chosen by the analysts. This paper presents the strategy for implementing the objectives mentioned above in the con_text of two practical examples,by employing theories and approaches from spatial statistics.The first case is to enhance the ground resolution of TM6 by employing regression model,which requires some statistical parameters before the regression analysis and all these parameters should be calculated within small image blocks.The second case is to correct the non_uniform illumination effect appearing in pictures of deep sea_floor.The non_uniform illumination effect could be easily removed according to the algorithm proposed in this paper,however,the whole image is also needed to be divided into small image blocks before the algorithm can be used.The sizes of all the small image blocks in both cases can not be determined arbitrarily,otherwise,the resultant will not be optimal in the first case or the non_uniform illumination effect will not be removed completely in the second one. A concise introduction of spatial statistics is presented in the paper in order to help those who are not familiar with this subject.The range,an important parameter from variogram,reflects the area within which the autocorrelation of a regionarized variable between two separated spatial points,say x and x h,is significant or not.This property is actually the embodiment of the homogeneity in the given area.Once this area is sensed by satellite sensors or by other means and digitized to be digital images,this homogeneity will be inherited.So it is obvious that the size of a geographic window within which geo_spatial data analysis will be carried out should be determined according to the homogeneity of the corresponding area.With this conclusion in mind,the horizontal and vertical variogram can be calculated and the corresponding ranges can be obtained.Assign the values of the horizontal and vertical range to be the width and height of a geographic window respectively,the window is then determined.The main steps implementing the suggested strategy are listed and some attentions that should be paid when using this method are also expounded in the paper.Finally,the two problems presented at the beginning of the paper are successfully solved using the method described here. Besides,the method proposed in this paper of non_uniform illumination correction for deep sea floor pictures is a simple but successful one.Borrowing the idea of linearization and planarization from calculus,a stretching formula proposed in this paper removes the non_uniform illumination effect completely.This method has been widely adopted in practice.
Keywords:image processing  geograpic window  spatial statistics  non_uniform illumination effective removing
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