Active contours driven by kernel-based fitting energy

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作者
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[1] [1,Zhu, Xiaoshu
[2] Sun, Quansen
[3] Xia, Deshen
[4] Sun, Huaijiang
来源
| 2015年 / Institute of Computing Technology卷 / 27期
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Image segmentation;
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摘要
In this paper, a new region-based active contour model using kernel-based fitting energy is proposed to improve the accuracy and efficiency of segmentation. The proposed kernel-based fitting energy is defined as a kernel function inducing a robust non-Euclidean distance measurement to segment images more effectively. In addition, an exponential-type kernel-based function in our model is used, which leads to faster converge. At last, to avoid costly computation of re-initialization widely adopted in traditional level set methods, we introduce a new penalty energy as a regularization term. Experimental results demonstrate that our model can segment images more precisely and much faster than the well-known Chan-Vese model. ©, 2015, Institute of Computing Technology. All right reserved.
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