ISCAS OpenIR
Adaptive algorithm for automated polygonal approximation of high spatial resolution remote sensing imagery segmentation contours
Liu, Jianhua (1); Zhang, Jinfang (3); Xu, Fangjiang (3); Huang, Zhijian (3); Li, Yaping (3)
2014
SourceIEEE Transactions on Geoscience and Remote Sensing
ISSN1962892
Volume52Issue:2Pages:1099-1106
English AbstractThe contours of polygons generated by the image segmentation technique show jagged outlines and a large number of redundant points. Therefore, the original segmentation contours hardly conform to geographic information system (GIS) data-producing standards without generalization. With the complexity of high spatial resolution remote sensing imagery data, with variable sizes of geographic features and their different distributive patterns, it is hard to build a global contour optimization parameter model to guide parameter settings in large regions effectively. Furthermore, it is also difficult to automatically give a unique set of parameters per object simultaneously. In order to meet the actual requirements of GIS data production, we present an adaptively improved algorithm based on the Douglas-Peucker (DP) algorithm, named AIDP, that integrates the criteria of vertical and radial distance restriction, and design a corresponding parameter-adaptive acquisition method. The proposed AIDP method is evaluated by comparing it with the most widely used DP algorithm implemented in the ArcGIS through visual inspection, quantitative measurements, and applications to water body contours. The experimental results show that AIDP can not only acquire generalization parameters automatically but also greatly speed up the data processing workflow with acceptable results. © 1980-2012 IEEE.; The contours of polygons generated by the image segmentation technique show jagged outlines and a large number of redundant points. Therefore, the original segmentation contours hardly conform to geographic information system (GIS) data-producing standards without generalization. With the complexity of high spatial resolution remote sensing imagery data, with variable sizes of geographic features and their different distributive patterns, it is hard to build a global contour optimization parameter model to guide parameter settings in large regions effectively. Furthermore, it is also difficult to automatically give a unique set of parameters per object simultaneously. In order to meet the actual requirements of GIS data production, we present an adaptively improved algorithm based on the Douglas-Peucker (DP) algorithm, named AIDP, that integrates the criteria of vertical and radial distance restriction, and design a corresponding parameter-adaptive acquisition method. The proposed AIDP method is evaluated by comparing it with the most widely used DP algorithm implemented in the ArcGIS through visual inspection, quantitative measurements, and applications to water body contours. The experimental results show that AIDP can not only acquire generalization parameters automatically but also greatly speed up the data processing workflow with acceptable results. © 1980-2012 IEEE.
Indexed TypeSCI ; EI
KeywordAdaptive Polygonal Approximation Geographic Object-based Image Analysis (Gobia) High Spatial Resolution Remote Sensing Imagery (Hsrrsi) Image Segmentation Segmentation Contours
Department(1) School of Surveying and Mapping Engineering, Beijing University of Civil Engineering, China; (2) Key Laboratory for Urban Geomatics of National Administration of Surveying, Mapping and Geoinformation, Beijing 100044, China; (3) State Key Laboratory of Integrated Information System Technology, Institute of Software, Chinese Academy of Sciences, Beijing 100190, China
Language英语
WOS IDWOS:000328941300026
Citation statistics
Content Type期刊论文
URIhttp://ir.iscas.ac.cn/handle/311060/16874
Collection中国科学院软件研究所
Recommended Citation
GB/T 7714
Liu, Jianhua ,Zhang, Jinfang ,Xu, Fangjiang ,et al. Adaptive algorithm for automated polygonal approximation of high spatial resolution remote sensing imagery segmentation contours[J]. IEEE Transactions on Geoscience and Remote Sensing,2014,52(2):1099-1106.
APA Liu, Jianhua ,Zhang, Jinfang ,Xu, Fangjiang ,Huang, Zhijian ,&Li, Yaping .(2014).Adaptive algorithm for automated polygonal approximation of high spatial resolution remote sensing imagery segmentation contours.IEEE Transactions on Geoscience and Remote Sensing,52(2),1099-1106.
MLA Liu, Jianhua ,et al."Adaptive algorithm for automated polygonal approximation of high spatial resolution remote sensing imagery segmentation contours".IEEE Transactions on Geoscience and Remote Sensing 52.2(2014):1099-1106.
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