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Geometrical Reorientation of Distorted Road Sign using Projection Transformation for Road Sign Recognition

도로표지판 인식을 위한 사영 변환을 이용한 왜곡된 표지판의 기하교정

  • 임희철 (울산대학교 자동차선박기술대학원) ;
  • 코식뎁 (울산대학교 전기전자정보시스템공학부) ;
  • 조강현 (울산대학교 자동차선박기술대학원)
  • Published : 2009.11.01

Abstract

In this paper, we describe the reorientation method of distorted road sign by using projection transformation for improving recognition rate of road sign. RSR (Road Sign Recognition) is one of the most important topics for implementing driver assistance in intelligent transportation systems using pattern recognition and vision technology. The RS (Road Sign) includes direction of road or place name, and intersection for obtaining the road information. We acquire input images from mounted camera on vehicle. However, the road signs are often appeared with rotation, skew, and distortion by perspective camera. In order to obtain the correct road sign overcoming these problems, projection transformation is used to transform from 4 points of image coordinate to 4 points of world coordinate. The 4 vertices points are obtained using the trajectory as the distance from the mass center to the boundary of the object. Then, the candidate areas of road sign are transformed from distorted image by using homography transformation matrix. Internal information of reoriented road signs is segmented with arrow and the corresponding indicated place name. Arrow area is the largest labeled one. Also, the number of group of place names equals to that of arrow heads. Characters of the road sign are segmented by using vertical and horizontal histograms, and each character is recognized by using SAD (Sum of Absolute Difference). From the experiments, the proposed method has shown the higher recognition results than the image without reorientation.

Keywords

References

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