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New method for recognition of circular traffic sign based on radial symmetry and pseudo-zernike moments 被引量:1

New method for recognition of circular traffic sign based on radial symmetry and pseudo-zernike moments
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摘要 Recognizing various traffic signs,especially the popular circular traffic signs,is an essential task for implementing advanced driver assistance system.To recognize circular traffic signs with high accuracy and robustness,a novel approach which uses the so-called improved constrained binary fast radial symmetry(ICBFRS) detector and pseudo-zernike moments based support vector machine(PZM-SVM) classifier is proposed.In the detection stage,the scene image containing the traffic signs will be converted into Lab color space for color segmentation.Then the ICBFRS detector can efficiently capture the position and scale of sign candidates within the scene by detecting the centers of circles.In the classification stage,once the candidates are cropped out of the image,pseudo-zernike moments are adopted to represent the features of extracted pictogram,which are then fed into a support vector machine to classify different traffic signs.Experimental results under different lighting conditions indicate that the proposed method has robust detection effect and high classification accuracy. Recognizing various traffic signs,especially the popular circular traffic signs,is an essential task for implementing advanced driver assistance system.To recognize circular traffic signs with high accuracy and robustness,a novel approach which uses the so-called improved constrained binary fast radial symmetry(ICBFRS) detector and pseudo-zernike moments based support vector machine(PZM-SVM) classifier is proposed.In the detection stage,the scene image containing the traffic signs will be converted into Lab color space for color segmentation.Then the ICBFRS detector can efficiently capture the position and scale of sign candidates within the scene by detecting the centers of circles.In the classification stage,once the candidates are cropped out of the image,pseudo-zernike moments are adopted to represent the features of extracted pictogram,which are then fed into a support vector machine to classify different traffic signs.Experimental results under different lighting conditions indicate that the proposed method has robust detection effect and high classification accuracy.
出处 《Journal of Beijing Institute of Technology》 EI CAS 2011年第4期520-526,共7页 北京理工大学学报(英文版)
基金 Supported by the Program for Changjiang Scholars and Innovative Research Team (2008) Program for New Centoury Excellent Talents in University(NCET-09-0045) the National Nat-ural Science Foundation of China (60773044,61004059) the Natural Science Foundation of Beijing(4101001)
关键词 traffic sign recognition circle detection fast radial symmetry detector pseudo-zernike moments support vector machine traffic sign recognition circle detection fast radial symmetry detector pseudo-zernike moments support vector machine
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参考文献12

  • 1Fu M Y,Huang Y S.A survey of traffic sign recognition[C] //International Conference of Wavelet Analysis and Pattern Recognition.Qingdao:IEEE,2010:119-124.
  • 2Barnes N,Zelinsky A,Fletcher L S.Real-time speed sign detection using the radial symmetry detector[J].IEEE Transactions on Intelligent Transportation Systems,2008,9 (2):322-332.
  • 3Loy G,Zelinsky A.Fast radial symmetry transform for detecting points of interest[J].IEEE Transactions on Pattern Analysis and Machine Intelligence,2003,25(8):959-973.
  • 4Huang Y S,Fu M Y,Ma H B.A new traffic sign recognition system with IFRS detector and MP-SVM classifier[C] //Second Global Congress on Intelligent Systems.Wuhan:CPS,2010(3):23-27.
  • 5Wikipedia.Lab color space-From Wikipedia,the free encyclopedia[EB/OL].(2010-09-27)[2010-09-29].http:// en.wikipedia.org/wiki/Lab _ color _space.
  • 6Teague M R.Image analysis via the general theory of moments[J].Journal of the Optical Society of America,1980,70:920-930.
  • 7Teh C H,Chin R T.On image analysis by the methods of moments[J].IEEE Transactions on Pattern Analysis and Machine Intelligence,1988,10:496-513.
  • 8Fleyeh H,Dougherty M,Aenugula D,et al.Invariant road sign recognition with fuzzy ARTMAP and zernike moments[C] // IEEE Intelligent Vehicles Symposium.Istanbul:IEEE,2007:31-36.
  • 9Chong C W,Raveendran P,Mukundan R.An efficient algorithm for fast computation of pseudozernike moments[J].International Journal of Pattern Recognition and Artificial Intelligence,2003,17:1011-1023.
  • 10Loy G,Zelinsky A.A fast radial symmetry transform for detecting points of interest[C] //7th European Conference on Computer Vision.Copenhagen:Springer,2002,2350:358-368.

同被引文献14

  • 1许廷发,倪国强.基于LOG GABOR小波相位一致不变量的目标识别[J].光电子.激光,2006,17(2):222-225. 被引量:4
  • 2Wang Jin,Kang Xiong.Recognition method of road speed limit sign based on evolvable hardware[J].Journal of Jiangsu University:Natural Science Edition,2011,32(6):689-694.
  • 3Nguwi Y Y,Kouzani A Z.Detection and classification of road signs in natural environments[J].Neural Computation and Application,2008,17 (3):265-289.
  • 4de la Escalera A,Armingol J M,Pastor J M.Visual sign information extraction and identification by deformable models for intelligent vehicles[J].Transaction of Intelligent Transportation System,2004,5(2):57-68.
  • 5Gao X W,Podladchikova L,Shaposhnikov D.Recognition of traffic signs based on their colour and shape features extracted using human vision models[J].Journal of Vision Communication and Image Representation,2006,17(4):675-685.
  • 6Bahlmann C,Zhu Y,Ramesh V,et al.A system for traffic sign detection,tracking and recognition using color,shape,and motion information[C]//IEEE Intelligent Vehicles Symposium.Piscataway,USA:IEEE Press,2005:255-260.
  • 7Baró X,Escalera S,Vitriá J,et al.Traffic sign recognition using evolutionary adaboost detection and forestECOC classification[J].IEEE Transaction of Intelligent Transportation Systems,2009,10 (1):113-126.
  • 8Koncar A,JanBen H,Halgamuge S.Gabor wavelet similarity maps for optimizing hierarchical road sign classifiers[J].Pattern Recognition Letters,2007,28:260-267.
  • 9Field D J,Chandler D M.Method for estimating the relative contribution of phase and power spectra to the total information in natural-scene patches[J].Journal of the Optical Society of America A:Optics,Image Science,and Vision,2012,29(1):55-67.
  • 10Fischer S,(S)roubek F,Perrinet L,et al.Self invertible 2D Log-Gabor wavelets[J].International Journal of Computer Vision,2007,75 (2):231-246.

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