Lane marking detection in cluttered environment

Research output: Contribution to journalArticlepeer-review

Abstract

Objective: To determine the positions of marking in the presence of distracting shadows, highlight, pavement cracks, etc. Methods: RGB color space is transformed into I1 I2 I3 color space and I2 component was used to form a new image with less effect of the clutter. Using an improved edge detection operator, an edge strength map was produced, and binarilized by adaptive thresholds. The binary image was labeled and circularity of all connected components is calculated. The Self-Organizing Mapping is adopted to extract regions which imply potential marking. Finally the position of marking was obtained by curve fitting. Results: Color information was utilized fully, all thresholds were set adaptively and lane marking could be detected in challenging images with shadows, highlight or other cars. Conclusion: The method based on circularity of connected components shows its outstanding robustness to lane marking detection and has a wide variety of applications in the areas of vehicle autonomous navigation and driver assistance system.

Original languageEnglish
Pages (from-to)125-128+133
JournalAcademic Journal of Xi'an Jiaotong University
Volume15
Issue number2
StatePublished - Nov 2003

Keywords

  • Color space transformation
  • Edge detection
  • Intelligent vehicles
  • Lane detection

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