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Road Extraction Based on Random Forest and Color Correlogram

랜덤 포레스트와 칼라 코렐로그램을 이용한 도로추출

  • 최지혜 (전남대학교 산업공학과(시스템자동화연구소)) ;
  • 송광열 (전남대학교 산업공학과(시스템자동화연구소)) ;
  • 이준웅 (전남대학교 산업공학과(시스템자동화연구소))
  • Received : 2011.01.25
  • Accepted : 2011.03.14
  • Published : 2011.04.01

Abstract

This paper presents a system of road extraction for traffic images from a single camera. The road in the images is subject to large changes in appearance because of environmental effects. The proposed system is based on the integration of color correlograms and random forest. The color correlogram depicts the color properties of an image properly. Using the random forest, road extraction is formulated as a learning paradigm. The combined effects of color correlograms and random forest create a robust system capable of extracting the road in very changeable situations.

Keywords

References

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