Line feature extraction in a noisy image

  • Lee, Joon-Woong (KIA Technical Center, Kia Motors) ;
  • Oh, Hak-Seo (Production Engineering Center, Samsung Electronics) ;
  • Kweon, In-So (Department of Automation and Design Eng., Korea Advanced Institute of Science and Technology)
  • Published : 1996.10.01

Abstract

Finding line segments in an intensity image has been one of the most fundamental issues in computer vision. In complex scenes, it is hard to detect the locations of point features. Line features are more robust in providing greater positional accuracy. In this paper we present a robust "line features extraction" algorithm which extracts line feature in a single pass without using any assumptions and constraints. Our algorithm consists of five steps: (1) edge scanning, (2) edge normalization, (3) line-blob extraction, (4) line-feature computation, and (5) line linking. By using edge scanning, the computational complexity due to too many edge pixels is drastically reduced. Edge normalization improves the local quantization error induced from the gradient space partitioning and minimizes perturbations on edge orientation. We also analyze the effects of edge processing, and the least squares-based method and the principal axis-based method on the computation of line orientation. We show its efficiency with some real images.al images.

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