Geometric Primitives Detection in Aerial Image
Geometric Primitives are important features for aerial image interpretation, especially for understanding of manmade objects. With the increasing resolution of aerial image, growing size and complexity of image make it more difficult to efficiently extract dependable geometric features such as lines and corners. In this paper, we propose a novel linear feature extraction approach called Trichotomy Line Extraction. According to the knowledge of geometric properties of interested objects in aerial image, i.e. manmade objects, a rule is designed to remove line segments meaningless for boundaries of interested objects. Then line updating is carried out based on spatial and geometric relation between lines, to improve connectivity of boundary lines and also to extract corners on object boundary. Experiment results show that proposed line extraction method can perform efficiently with accurate linear features of objects in large aerial image and meaningless line segments removing process is effective to improve the geometric features description of object and to reduce computing burden of following step.
Geometric primitive extraction Trichotomy line extraction Line updating.
Jing WANG Satoshi GOTO Kazuo KUNIEDA Makoto IWATA Hirokazu KOIZUMI Hideo SHIMAZU Takeshi IKENAGA
Graduate School of IPS, Waseda University, Fukuoka, Japan System Technology Laboratory, NEC System Technologies,Ltd., Japan
国际会议
Firth IEEE International Conference on Cognitive Informatics(第五届认知信息国际会议)
北京
英文
400-404
2006-07-17(万方平台首次上网日期,不代表论文的发表时间)