期刊文献+

Adaptive key SURF feature extraction and application in unmanned vehicle dynamic object recognition 被引量:1

Adaptive key SURF feature extraction and application in unmanned vehicle dynamic object recognition
下载PDF
导出
摘要 A new method based on adaptive Hessian matrix threshold of finding key SRUF ( speeded up robust features) features is proposed and is applied to an unmanned vehicle for its dynamic object recognition and guided navigation. First, the object recognition algorithm based on SURF feature matching for unmanned vehicle guided navigation is introduced. Then, the standard local invariant feature extraction algorithm SRUF is analyzed, the Hessian Metrix is especially discussed, and a method of adaptive Hessian threshold is proposed which is based on correct matching point pairs threshold feedback under a close loop frame. At last, different dynamic object recognition experi- ments under different weather light conditions are discussed. The experimental result shows that the key SURF feature abstract algorithm and the dynamic object recognition method can be used for un- manned vehicle systems. A new method based on adaptive Hessian matrix threshold of finding key SRUF ( speeded up robust features) features is proposed and is applied to an unmanned vehicle for its dynamic object recognition and guided navigation. First, the object recognition algorithm based on SURF feature matching for unmanned vehicle guided navigation is introduced. Then, the standard local invariant feature extraction algorithm SRUF is analyzed, the Hessian Metrix is especially discussed, and a method of adaptive Hessian threshold is proposed which is based on correct matching point pairs threshold feedback under a close loop frame. At last, different dynamic object recognition experi- ments under different weather light conditions are discussed. The experimental result shows that the key SURF feature abstract algorithm and the dynamic object recognition method can be used for un- manned vehicle systems.
出处 《Journal of Beijing Institute of Technology》 EI CAS 2015年第1期83-90,共8页 北京理工大学学报(英文版)
基金 Supported by the National Natural Science Foundation of China(61103157) Beijing Municipal Education Commission Project(SQKM201311417010)
关键词 dynamic object recognition key SURF feature feature matching adaptive Hessianthreshold unmanned vehicle dynamic object recognition key SURF feature feature matching adaptive Hessianthreshold unmanned vehicle
  • 相关文献

参考文献3

二级参考文献34

  • 1付梦印,李杰,邓志红.一种适于车辆导航系统的快速地图匹配算法[J].北京理工大学学报,2005,25(3):225-229. 被引量:23
  • 2Zhao Yilin. Vehicle location and navigation system[M]. London: Artech House, 1997.
  • 3Pereira F C, Costa H, Pereira N M. An off-line map- matching algorithm for incomplete map database[J]. European Transport Research Review, 2009, 1 (3): 107 - 124.
  • 4Zhang Xiaoguo, Wang Qing, Wan Dejun. The relationship among vehicle positioning performance, map quality, and sensitivities and feasibilities of map- matching algorithms [C] // Proceedings of Intelligent Vehicles Symposium. Columbus: IEEE, 2003: 468- 473.
  • 5Scott C A. Improved GPS positioning for motor vehicles through map matching[C] // Proceedings of the 7th In- ternational Technical Meeting of the Satellite Division of the Institute of Navigation. Salt Lake, Utah: SDIN, 1994:1391 - 1400.
  • 6Brown M, Lowe D G. Recognizing panoramas[C] ff Proceedings of the 9th International Conference onComputer Vision ( ICCV03). Nice, France.. IEEE, 2003 .. 1218 - 1225.
  • 7Lowe D G. Distinctive image features from scale- invariant keypoints [ J ]. International Journal of Computer Vision, 2004,60(2) : 91 - 110.
  • 8Jegou H, Harzallah H, Schmid C. A contextual dissimilarity measure for accurate and efficient image search[C] ffProceedings of the Conference on Computer Vision Pattern Recognition. Minneapolis, USA: Is. n.], 2007:1-8.
  • 9Zitova B, Flusser J. Image registration methods: a survey[J]. Image and Vision Computing, 2003, 21: 977 - 100.
  • 10Lowe D G. Object recognition from local scale-invariant features [ C] // Proceedings of the International Conference on Computer Vision. Kerkyra, Greece: IEEE, 19991150 - 1157.

共引文献64

同被引文献12

引证文献1

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部