An active contour model with local variance force term and its efficient minimization solver for multi-phase image
报告人:
Zhonghua Qiao, Professor, The Hong Kong Polytechnic University
题目:
An active contour model with local variance force term and its efficient minimization solver for multi-phase image
时间地点:
9:40-10:20 November 23(Wednesday), Tencent Meeting ID: 481-992-993
摘要:
In this work, we propose an active contour model with a local variance force (LVF) term that can be applied to multi-phase image segmentation problems. With the LVF, the proposed model is very effective in the segmentation of images with noise. To solve this model efficiently, we represent the regularization term by characteristic functions and then design a minimization algorithm based on a modification of the iterative convolution-thresholding method (ICTM), namely ICTM-LVF. This minimization algorithm enjoys the energy-decaying property under some conditions and has highly efficient performance in the segmentation. To overcome the initialization issue of active contour models, we generalize the inhomogeneous graph Laplacian initialization method (IGLIM) to the multi-phase case and then apply it to give the initial contour of the ICTM-LVF solver. Numerical experiments are conducted on synthetic images and real images to demonstrate the capability of our initialization method, and the effectiveness of the local variance force for noise robustness in the multi-phase image segmentation.