Title :
Self-training statistic snake for image segmentation and tracking
Author :
Pardo, X.M. ; Radeva, P. ; Villanueva, J.J.
Author_Institution :
Dept. Electron. e Comput., Santiago de Compostela Univ., Spain
Abstract :
In this work we propose a new supervised deformable model that generalizes the classical contour-based snake. This model is defined to deform in a feature space generated by a set of Gaussian derivative filter responses. The snake selects and classifies image features by a parametric vector that gives the direction in the feature space minimizing the dissimilarity between the learned and found image features and maximizing the distance between different contour configurations. Each snake curve patch is devoted to searching for a special contour configuration. The classes corresponding to different contour configurations are obtained by means of a statistical supervised learning technique using samples of different contours and no contour points. The snake starts with a large set of Gaussian filters that is reduced by means of principal component analysis in a supervised way to optimize it in the feature search
Keywords :
Gaussian distribution; edge detection; feature extraction; filtering theory; image classification; image segmentation; learning (artificial intelligence); minimisation; parameter estimation; principal component analysis; search problems; tracking filters; Gaussian derivative filter responses; contour-based snake; curve patch; dissimilarity minimization; distance maximization; feature space; image classification; image segmentation; image tracking; learned features; parametric vector; principal component analysis; searching; self-training statistic snake; statistical supervised learning; supervised deformable model; Computer vision; Electrical capacitance tomography; Filters; Image segmentation; Image sequences; Layout; Parametric statistics; Principal component analysis; Shape; Supervised learning;
Conference_Titel :
Image Analysis and Processing, 1999. Proceedings. International Conference on
Conference_Location :
Venice
Print_ISBN :
0-7695-0040-4
DOI :
10.1109/ICIAP.1999.797629