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A Normalized Local Binary Fitting Model for Image Segmentation

机译:图像分割的归一化局部二值拟合模型

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摘要

A normalized local binary fitting (NLBF) model is proposed for image segmentation in this paper. The proposed model can effectively and efficiently segment images with intensity in homogeneity because the image local characteristics are considered. At the same time, we use a Gaussian filtering process instead of the regularization to keep the level set function smooth in the evolution process. The strategy can reduce computational cost. Comparative experimental results on synthetic and real images demonstrate that the proposed model outperforms the well-known local binary fitting (LBF) model in computational efficiency and robustness to the initial contour.
机译:提出了一种归一化局部二进制拟合模型。由于考虑了图像局部特征,所提出的模型可以有效且高效地对强度均匀的图像进行分割。同时,我们使用高斯滤波过程而不是正则化过程来使水平集函数在演化过程中保持平滑。该策略可以减少计算成本。在合成图像和真实图像上的对比实验结果表明,所提出的模型在计算效率和对初始轮廓的鲁棒性方面均优于众所周知的局部二进制拟合(LBF)模型。

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