期刊文献+

Improved method for the feature extraction of laser scanner using genetic clustering 被引量:6

Improved method for the feature extraction of laser scanner using genetic clustering
下载PDF
导出
摘要 Feature extraction of range images provided by ranging sensor is a key issue of pattern recognition. To automatically extract the environmental feature sensed by a 2D ranging sensor laser scanner, an improved method based on genetic clustering VGA-clustering is presented. By integrating the spatial neighbouring information of range data into fuzzy clustering algorithm, a weighted fuzzy clustering algorithm (WFCA) instead of standard clustering algorithm is introduced to realize feature extraction of laser scanner. Aimed at the unknown clustering number in advance, several validation index functions are used to estimate the validity of different clustering algorithms and one validation index is selected as the fitness function of genetic algorithm so as to determine the accurate clustering number automatically. At the same time, an improved genetic algorithm IVGA on the basis of VGA is proposed to solve the local optimum of clustering algorithm, which is implemented by increasing the population diversity and improving the genetic operators of elitist rule to enhance the local search capacity and to quicken the convergence speed. By the comparison with other algorithms, the effectiveness of the algorithm introduced is demonstrated. Feature extraction of range images provided by ranging sensor is a key issue of pattern recognition. To automatically extract the environmental feature sensed by a 2D ranging sensor laser scanner, an improved method based on genetic clustering VGA-clustering is presented. By integrating the spatial neighbouring information of range data into fuzzy clustering algorithm, a weighted fuzzy clustering algorithm (WFCA) instead of standard clustering algorithm is introduced to realize feature extraction of laser scanner. Aimed at the unknown clustering number in advance, several validation index functions are used to estimate the validity of different clustering algorithms and one validation index is selected as the fitness function of genetic algorithm so as to determine the accurate clustering number automatically. At the same time, an improved genetic algorithm IVGA on the basis of VGA is proposed to solve the local optimum of clustering algorithm, which is implemented by increasing the population diversity and improving the genetic operators of elitist rule to enhance the local search capacity and to quicken the convergence speed. By the comparison with other algorithms, the effectiveness of the algorithm introduced is demonstrated.
出处 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2008年第2期280-285,共6页 系统工程与电子技术(英文版)
基金 the National Natural Science Foundation of China (60234030) the Natural Science Foundationof He’nan Educational Committee of China (2007520019, 2008B520015) Doctoral Foundation of Henan Polytechnic Universityof China (B050901, B2008-61)
关键词 laser scanner feature extraction weighted fuzzy clustering validation index genetic algorithm. laser scanner feature extraction weighted fuzzy clustering validation index genetic algorithm.
  • 相关文献

参考文献15

  • 1Forsyth D A, Ponce J, Lin X Y, et al. Computer vision: a modern approach. Publishing House of Electronics Industry, Beijing, 2004.
  • 2Bezdek J C. Pattern recognition with fuzzy objective function algorithms. Plenum Press, New York, 1981.
  • 3Gustafson D E, Kessel W C. Fuzzy clustering with a fuzzy covariance matrix. Proc. of the IEEE Conference on Decision and Control, 1979.
  • 4Kaymak U, Setnes M. Fuzzy clustering with volume prototypes and adaptive cluster merging. IEEE Trans. on Fuzzy Systems, 2002, 10(6): 705-712.
  • 5Sun J X. Modern pattern recognition. Press of National Defense University of Science and Technology, Changsha, 2002.
  • 6Borges G A, Aldon M J. Line extraction in 2D range images for mobile robotics. Journal of Intelligent and Robotic Systems, 2004, 40(3): 267-297.
  • 7Bezdek J C. Numerical taxonomy with fuzzy sets. Journal of Mathematical Biology, 1974, 1(1): 57-71.
  • 8Bezdek J C. Cluster validity with fuzzy sets. Journal of Cybernetics, 1974, 3(3): 58-72.
  • 9Xie X L, Beni G. A validity measure for fuzzy clustering. IEEE Trans. on Pattern Analysis and Machine Intelligence, 1991, 13(8): 841-847.
  • 10Davies D L, Bouldin D W. A cluster separation measure. IEEE Trans. on Pattern Analysis and Machine Intelligence, 1979, 1(2): 224-227.

同被引文献41

  • 1丁巍.浅述地面三维激光扫描技术及其点云误差分析[J].工程勘察,2009,37(S2):447-452. 被引量:14
  • 2苑玮琦,于清澄.一种基于改进主成分分析的人脸识别方法[J].激光与红外,2007,37(5):478-480. 被引量:12
  • 3陈友,沈华伟,李洋,程学旗.一种高效的面向轻量级入侵检测系统的特征选择算法[J].计算机学报,2007,30(8):1398-1408. 被引量:46
  • 4Waske B, Schiefem S, Braun M. Random Feature Selection for Decision Tree Classification of Multi-Temporal SAR Data [ C ]. Prec of the IEEE International Geoscienee and Remote Sensing Symposium. Denver, USA, 2006:168 - 171.
  • 5Tian D, Keane J, Zeng Xiaojun. Evaluating the Effect of Rough Set Feature Selection on the Performance of Decision Trees[ C ]. Proc of the IEEE International Conference on Granular Computing. Atlanta, USA, 2006:57-62.
  • 6Chen Huanhuan, Yao Xin. Evolutionary Multi-objective Ensemble Learning Based on Bayesian Feature Selection[ D]. Proc of the IEEE Congress on Evolutionary Computation. Vancouver, USA, 2006:267-274.
  • 7Hu Q H,Xie Z X, Yu D R. Hybrid attribute reduction based on a novel fuzzy2rough model and information granulation[ J ]. Pattern Recognition, 2007,40(12) :3509 -3521.
  • 8Rokach L. Genetic algorithm-based feature set partitioning for classification problems[ J]. Pattern Recognition, 2008,41 : 1676 - 1700.
  • 9van Coillie F M B, Verbeke L P C, de Wulf R R. Feature selection by genetic algorithms in object-based classification d IKONOS imagery for forest mapping in Flanders Belgium[ J]. Remote Sensing of Environment. 2007,110:476 -487.
  • 10Wu G F, Xu K, Xu J W. Application of a new feature extraction and optimization method to surface defect recognition of cold mlled strips[J]. Journal of University of Science and Technology, 2007,14(5) :437 -442.

引证文献6

二级引证文献36

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