Prostate TRUS Image Segmentation Without Shape Prior

Author(s):  
Yongtao Shi ◽  
Jianping Song
2018 ◽  
Vol 2018 ◽  
pp. 1-11
Author(s):  
Guoqi Liu ◽  
Haifeng Li

Active contour models are widely used in image segmentation. In order to obtain ideal object boundary, researchers utilize various information to define new models for image segmentation. However, the models could not meet all scenes of image. In this paper, we propose a block evolution method to improve the robustness of contour evolution. A block matrix is consisted of contours of former iterations and contours of shape prior, and a nuclear norm of the matrix is a measure of the similarity of these shapes. The constraint of the nuclear norm minimization is imposed on the evolution of active contour models, which could avoid large deformation of the adjacent curves and keep the shape conformability of contour in the evolution. The shape prior can be integrated into the block evolution method, which is effective in dealing with missing features of images and noise. The proposed method can be applied to image sequence segmentation. Experiments demonstrate that the proposed method improves the robust performance of active contour models and can increase the flexibility of applications in image sequence segmentation.


2011 ◽  
Author(s):  
Daniel A. Bishop ◽  
Anthony Yezzi, Jr.

2020 ◽  
Vol 14 (1) ◽  
pp. 183-191 ◽  
Author(s):  
Yongming Han ◽  
Shuheng Zhang ◽  
Zhiqing Geng ◽  
Qin Wei ◽  
Zhi Ouyang

2020 ◽  
Vol 83 ◽  
pp. 357-370
Author(s):  
Yunyun Yang ◽  
Xiu Shu ◽  
Ruofan Wang ◽  
Chong Feng ◽  
Wenjing Jia

2019 ◽  
Vol 2019 ◽  
pp. 1-17
Author(s):  
Wansuo Liu ◽  
Dengwei Wang ◽  
Wenjun Shi

This paper presents an optimized level set evolution (LSE) without reinitialization (LSEWR) model and a shape prior embedded level set model (LSM) for robust image segmentation. Firstly, by performing probability weighting and coefficient adaptive processing on the original LSEWR model, the optimized image energy term required by the proposed model is constructed. The purpose of the probability weighting is to introduce region information into the edge stop function to enhance the model’s ability to capture weak edges. The introduction of the adaptive coefficient enables the evolution process to automatically adjust its amplitude and direction according to the current image coordinate and local region information, thus completely solving the initialization sensitivity problem of the original LSEWR model. Secondly, a shape prior term driven by kernel density estimation (KDE) is additionally introduced into the optimized LSEWR model. The role of the KDE-driven shape prior term is to overcome the problem of image segmentation in the presence of geometric transformation and pattern interference. Even if there is obvious affine transformation in the shape prior and the target to be segmented, the target contour can still be reconstructed correctly. The extensive experiments on a large variety of synthetic and real images show that the proposed algorithm achieves excellent performance. In addition, several key factors affecting the performance of the proposed algorithm are analyzed in detail.


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