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Main Authors: Song, Fanghui, Sun, Jiebao, Shi, Shengzhu, Guo, Zhichang, Zhang, Dazhi
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2310.08861
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author Song, Fanghui
Sun, Jiebao
Shi, Shengzhu
Guo, Zhichang
Zhang, Dazhi
author_facet Song, Fanghui
Sun, Jiebao
Shi, Shengzhu
Guo, Zhichang
Zhang, Dazhi
contents Variational level set method has become a powerful tool in image segmentation due to its ability to handle complex topological changes and maintain continuity and smoothness in the process of evolution. However its evolution process can be unstable, which results in over flatted or over sharpened contours and segmentation failure. To improve the accuracy and stability of evolution, we propose a high-order level set variational segmentation method integrated with molecular beam epitaxy (MBE) equation regularization. This method uses the crystal growth in the MBE process to limit the evolution of the level set function, and thus can avoid the re-initialization in the evolution process and regulate the smoothness of the segmented curve. It also works for noisy images with intensity inhomogeneity, which is a challenge in image segmentation. To solve the variational model, we derive the gradient flow and design scalar auxiliary variable (SAV) scheme coupled with fast Fourier transform (FFT), which can significantly improve the computational efficiency compared with the traditional semi-implicit and semi-explicit scheme. Numerical experiments show that the proposed method can generate smooth segmentation curves, retain fine segmentation targets and obtain robust segmentation results of small objects. Compared to existing level set methods, this model is state-of-the-art in both accuracy and efficiency.
format Preprint
id arxiv_https___arxiv_org_abs_2310_08861
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Re-initialization-free Level Set Method via Molecular Beam Epitaxy Equation Regularization for Image Segmentation
Song, Fanghui
Sun, Jiebao
Shi, Shengzhu
Guo, Zhichang
Zhang, Dazhi
Computer Vision and Pattern Recognition
Variational level set method has become a powerful tool in image segmentation due to its ability to handle complex topological changes and maintain continuity and smoothness in the process of evolution. However its evolution process can be unstable, which results in over flatted or over sharpened contours and segmentation failure. To improve the accuracy and stability of evolution, we propose a high-order level set variational segmentation method integrated with molecular beam epitaxy (MBE) equation regularization. This method uses the crystal growth in the MBE process to limit the evolution of the level set function, and thus can avoid the re-initialization in the evolution process and regulate the smoothness of the segmented curve. It also works for noisy images with intensity inhomogeneity, which is a challenge in image segmentation. To solve the variational model, we derive the gradient flow and design scalar auxiliary variable (SAV) scheme coupled with fast Fourier transform (FFT), which can significantly improve the computational efficiency compared with the traditional semi-implicit and semi-explicit scheme. Numerical experiments show that the proposed method can generate smooth segmentation curves, retain fine segmentation targets and obtain robust segmentation results of small objects. Compared to existing level set methods, this model is state-of-the-art in both accuracy and efficiency.
title Re-initialization-free Level Set Method via Molecular Beam Epitaxy Equation Regularization for Image Segmentation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2310.08861