YU Hai-ping, HE Fa-zhi, PAN Yi-teng, et al. A Fast Distance Regularized Level Set Method for Segmentation Based on Multi-features[J]. Acta Electronica Sinica, 2017, 45(3): 534-539.
DOI:
YU Hai-ping, HE Fa-zhi, PAN Yi-teng, et al. A Fast Distance Regularized Level Set Method for Segmentation Based on Multi-features[J]. Acta Electronica Sinica, 2017, 45(3): 534-539. DOI: 10.3969/j.issn.0372-2112.2017.03.004.
A Fast Distance Regularized Level Set Method for Segmentation Based on Multi-features
The existing image segmentation models have problems of being sensitive to initialization information
slower segmentation and leaked weak image boundary regions.This paper presents a hybrid fast segmentation model which utilizes the local statistics of bias field approximated images
the global information of compatibility and the distance regularization method.Then the model is embedded into level set framework.In addition
a dual termination standard is constructed to improve the speed of segmentation.Experiments on synthetic and real images are conducted to verify the efficiency of our model.Moreover
comparisons with the well-known CV model
nonlinear adaptive level set model and region scalable fitting model demonstrate that the proposed model reduces the sensitivity to the initialization and improves the segmentation speed by 3~5 times.