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基于对象特征的山东省丘陵地区多时相遥感土地覆被自动分类
引用本文:谭磊,赵书河,罗云霄,周洪奎,王安,雷步云.基于对象特征的山东省丘陵地区多时相遥感土地覆被自动分类[J].生态学报,2014,34(24):7251-7260.
作者姓名:谭磊  赵书河  罗云霄  周洪奎  王安  雷步云
作者单位:卫星测绘技术与应用国家测绘地理信息局重点实验室, 南京大学, 南京 210023;江苏省地理信息技术重点实验室, 南京大学, 南京 210023;南京大学地理与海洋科学学院, 南京 210023;卫星测绘技术与应用国家测绘地理信息局重点实验室, 南京大学, 南京 210023;江苏省地理信息技术重点实验室, 南京大学, 南京 210023;南京大学地理与海洋科学学院, 南京 210023;卫星测绘技术与应用国家测绘地理信息局重点实验室, 南京大学, 南京 210023;江苏省地理信息技术重点实验室, 南京大学, 南京 210023;南京大学地理与海洋科学学院, 南京 210023;卫星测绘技术与应用国家测绘地理信息局重点实验室, 南京大学, 南京 210023;江苏省地理信息技术重点实验室, 南京大学, 南京 210023;南京大学地理与海洋科学学院, 南京 210023;卫星测绘技术与应用国家测绘地理信息局重点实验室, 南京大学, 南京 210023;江苏省地理信息技术重点实验室, 南京大学, 南京 210023;南京大学地理与海洋科学学院, 南京 210023;卫星测绘技术与应用国家测绘地理信息局重点实验室, 南京大学, 南京 210023;江苏省地理信息技术重点实验室, 南京大学, 南京 210023;南京大学地理与海洋科学学院, 南京 210023
基金项目:中国科学院战略性先导科技专项——应对气候变化的碳收支认证及相关问题(XDA05050106)
摘    要:对于基于像元的土地覆被分类来说,植被的分类是难点。使用多时相面向对象分类方法可以较好的解决这个问题。以山东省烟台市丘陵地区为研究区,采用Landsat TM(Landsat Thematic Mapper remotely sensed imagery)、DEM(Digital Elevation Model)、坡度、坡位、坡向等多种数据,利用基于对象特征的多时相分类方法对研究区进行土地覆盖自动分类。首先对影像进行多尺度分割并检验分割结果选取合适的分割尺度,然后分析对象的光谱、纹理、形状特征。根据各类地物的光谱特征、地理相关性、形状、空间分布等特征,明确类别之间的差异。建立决策树使用隶属度函数进行模糊分类,借助支持向量机提高分类精度。研究结果表明,通过使用多时相影像采用面向对象分类方法,相对于传统的基于像素的分类可以明显提高分类精度,尤其是解决了乔灌草的区分问题。

关 键 词:对象特征  丘陵地区  土地覆被分类  支持向量机
收稿时间:2013/10/14 0:00:00
修稿时间:2014/10/23 0:00:00

Application of object-oriented image analysis to land-cover classification in hilly areas
TAN Lei,ZHAO Shuhe,LUO Yunxiao,ZHOU Hongkui,WANG An and LEI Buyun.Application of object-oriented image analysis to land-cover classification in hilly areas[J].Acta Ecologica Sinica,2014,34(24):7251-7260.
Authors:TAN Lei  ZHAO Shuhe  LUO Yunxiao  ZHOU Hongkui  WANG An and LEI Buyun
Institution:Key Laboratory for Satellite Mapping Technology and Applications of State Administration of Surveying, Mapping and Geoinformation of China, Nanjing University, Nanjing 210023, China;Jiangsu Provincial Key Laboratory of Geographic Information Science and Technology, Nanjing University, Nanjing 210023, China;School of Geographic and Oceanographic Sciences, Nanjing University, Nanjing 210023, China;Key Laboratory for Satellite Mapping Technology and Applications of State Administration of Surveying, Mapping and Geoinformation of China, Nanjing University, Nanjing 210023, China;Jiangsu Provincial Key Laboratory of Geographic Information Science and Technology, Nanjing University, Nanjing 210023, China;School of Geographic and Oceanographic Sciences, Nanjing University, Nanjing 210023, China;Key Laboratory for Satellite Mapping Technology and Applications of State Administration of Surveying, Mapping and Geoinformation of China, Nanjing University, Nanjing 210023, China;Jiangsu Provincial Key Laboratory of Geographic Information Science and Technology, Nanjing University, Nanjing 210023, China;School of Geographic and Oceanographic Sciences, Nanjing University, Nanjing 210023, China;Key Laboratory for Satellite Mapping Technology and Applications of State Administration of Surveying, Mapping and Geoinformation of China, Nanjing University, Nanjing 210023, China;Jiangsu Provincial Key Laboratory of Geographic Information Science and Technology, Nanjing University, Nanjing 210023, China;School of Geographic and Oceanographic Sciences, Nanjing University, Nanjing 210023, China;Key Laboratory for Satellite Mapping Technology and Applications of State Administration of Surveying, Mapping and Geoinformation of China, Nanjing University, Nanjing 210023, China;Jiangsu Provincial Key Laboratory of Geographic Information Science and Technology, Nanjing University, Nanjing 210023, China;School of Geographic and Oceanographic Sciences, Nanjing University, Nanjing 210023, China;Key Laboratory for Satellite Mapping Technology and Applications of State Administration of Surveying, Mapping and Geoinformation of China, Nanjing University, Nanjing 210023, China;Jiangsu Provincial Key Laboratory of Geographic Information Science and Technology, Nanjing University, Nanjing 210023, China;School of Geographic and Oceanographic Sciences, Nanjing University, Nanjing 210023, China
Abstract:Remotely sensed imagery classification based on object-oriented image analysis plays an important role in mapping land cover. The object-oriented classification method is more useful than that based on pixel classification. Texture, shape and other features can be included in the object, which is generated after the segmentation. For a large area to be classified, Landsat Thematic Mapper (TM) remotely sensed imagery can be used as the data source. Therefore, we used TM images for object-oriented classification here. After selection of parameters for segmentation, we investigated how to optimize the TM temporal resolution, thereby improving the classification accuracy. In the study area (the city of Yantai, China), pixel-based classification of vegetation can be a challenge. The use of object-oriented classification combined with ancillary data such as multi-temporal characteristics, digital elevation model, slope, and slope direction can be a better solution to this problem. This study is organized as follows. First, a segmentation algorithm, the multiresolution segmentation based on the Fractal Net Evolution Approach (FNEA), is applied to the images. The shape parameter was set to 0.1 to highlight the homogeneous pixels for imagery segmentation. The compactness parameter was set to 0.5 to equally balance the compactness and smoothness of objects. Image layer weights of band1, band2, band3, band4 and band5 were all 1. We then tested the segmentation results to evaluate whether the scale parameter was suitable for classification. Ten objects of varying scale were visually selected from each category, and we then developed statistical spectral information of each band to obtain the mean as spectral values of each category for small variances. Ten pure pixels of each corresponding category were selected in the original image, the mean of which represented the spectral values of each band. We used linear regression analysis in which y was the mean spectral value of the objects and x was mean spectral value of pure pixels. If there was a good fit of y and x, the scale was considered reasonable. We chose L20, L40, and L80 scales (the scale parameters were set to 20 m, 40 m and 80 m) for classification based on the above results. According to spectral characteristics, geographic origin, shape, and location, an interpretation signs library was established. We distinguished categories by the characteristics of various types of objects. A decision tree was created, and we then used the membership function for classification. When the membership of a segment was less than the default threshold values for all relevant land-use categories, the segment was marked as unknown. Finally, a support vector machine was used to classify these unknown category objects. We obtained 216 sample points from the Yantai study area. We assessed the accuracy of results by the methods described above. This assessment gave an overall accuracy of 82.7%. We classified the same imagery using the maximum likelihood method, together with the same ancillary data and expert knowledge. Overall accuracy of the results was 64.2%. Using the object-oriented classification method with multi-temporal images can significantly improve classification accuracy compared with traditional pixel-based classification, especially in vegetation classification to distinguish shrubs and grasses.
Keywords:object-oriented  hilly areas  land cover classification  support vector machine
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