Share Email Print
cover

Journal of Electronic Imaging

Image segmentation with adaptive region growing based on a polynomial surface model
Author(s): Francis Deboeverie; Peter Veelaert; Wilfried Philips
Format Member Price Non-Member Price
PDF $20.00 $25.00

Paper Abstract

A new method for segmenting intensity images into smooth surface segments is presented. The main idea is to divide the image into flat, planar, convex, concave, and saddle patches that coincide as well as possible with meaningful object features in the image. Therefore, we propose an adaptive region growing algorithm based on low-degree polynomial fitting. The algorithm uses a new adaptive thresholding technique with the L fitting cost as a segmentation criterion. The polynomial degree and the fitting error are automatically adapted during the region growing process. The main contribution is that the algorithm detects outliers and edges, distinguishes between strong and smooth intensity transitions and finds surface segments that are bent in a certain way. As a result, the surface segments corresponding to meaningful object features and the contours separating the surface segments coincide with real-image object edges. Moreover, the curvature-based surface shape information facilitates many tasks in image analysis, such as object recognition performed on the polynomial representation. The polynomial representation provides good image approximation while preserving all the necessary details of the objects in the reconstructed images. The method outperforms existing techniques when segmenting images of objects with diffuse reflecting surfaces.

Paper Details

Date Published: 2 October 2013
PDF: 14 pages
J. Electron. Imaging. 22(4) 043004 doi: 10.1117/1.JEI.22.4.043004
Published in: Journal of Electronic Imaging Volume 22, Issue 4
Show Author Affiliations
Francis Deboeverie, Univ. Gent (Belgium)
Peter Veelaert, Univ. Gent (Belgium)
Wilfried Philips, Univ. Gent (Belgium)


© SPIE. Terms of Use
Back to Top