Publication

Fusion of a multiple hypotheses color model and deformable contours for figure ground segmentation in dynamic enviroments

Conference Article

Conference

CVPR Workshop on Articulated and Non-Rigid Motion (ANM)

Edition

2004

Pages

13-14

Doc link

http://dx.doi.org/10.1109/CVPR.2004.350

File

Download the digital copy of the doc pdf document

Abstract

In this paper we propose a new technique to perform figure-ground segmentation in image sequences of moving objects under varying illumination conditions. Unlike most of the algorithms that adapt color, the assumption of smooth change of the viewing conditions is no longer needed. To cope with this, in this work we introduce a technique that formulates multiple hypotheses about the next state of the color distribution (some of these hypotheses take into account small and gradual changes in the color model and others consider more abrupt and unexpected variations) and the hypothesis that generates the best object segmentation is used to remove noisy edges from the image. This simplifies considerably the final step of fitting a deformable contour to the object boundary, thus allowing a standard snake formulation to successfully track nonrigid contours. Reciprocally, the contour estimation is used to correct the color model. The integration of color and shape is done in a stage denominated ‘sample concentration’, that has been introduced as a final step to the well-known CONDENSATION algorithm.

Categories

computer vision, feature extraction, object detection.

Author keywords

tracking, deformable contours, color adaption, particle filters

Scientific reference

F. Moreno-Noguer, A. Sanfeliu and D. Samaras. Fusion of a multiple hypotheses color model and deformable contours for figure ground segmentation in dynamic enviroments, 2004 CVPR Workshop on Articulated and Non-Rigid Motion, 2004, Washington, pp. 13-14, 2004, UPC-CSIC.