A Modified Generalized Hough Transform for Image Search

  • Authors:
  • Preeyakorn Tipwai;Suthep Madarasmi

  • Affiliations:
  • The authors are with the Department of Computer Engineering, King Mongkut's University of Technology Thonburi, Bangkok, Thailand. E-mail: neng@cpe.kmutt.ac.th, E-mail: suthep@kmutt.ac.th;The authors are with the Department of Computer Engineering, King Mongkut's University of Technology Thonburi, Bangkok, Thailand. E-mail: neng@cpe.kmutt.ac.th, E-mail: suthep@kmutt.ac.th

  • Venue:
  • IEICE - Transactions on Information and Systems
  • Year:
  • 2007

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Abstract

We present the use of a Modified Generalized Hough Transform (MGHT) and deformable contours for image data retrieval where a given contour, gray-scale, or color template image can be detected in the target image, irrespective of its position, size, rotation, and smooth deformation transformations. Potential template positions are found in the target image using our novel modified Generalized Hough Transform method that takes measurements from the template features by extending a line from each edge contour point in its gradient direction to the other end of the object. The gradient difference is used to create a relationship with the orientation and length of this line segment. Potential matching positions in the target image are then searched by also extending a line from each target edge point to another end along the normal, then looking up the measurements data from the template image. Positions with high votes become candidate positions. Each candidate position is used to find a match by allowing the template to undergo a contour transformation. The deformed template contour is matched with the target by measuring the similarity in contour tangent direction and the smoothness of the matching vector. The deformation parameters are then updated via a Bayesian algorithm to find the best match. To avoid getting stuck in a local minimum solution, a novel coarse-and-fine model for contour matching is included. Results are presented for real images of several kinds including bin picking and fingerprint identification.