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Wavelet-based Improved Chan-Vese Model for Image Segmentation

机译:基于小波的改进的Chan-Vese图像分割模型

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摘要

In this paper, a kind of image segmentation approach which based on improved Chan-Vese (CV) model and wavelet transform was proposed. Firstly, one-level wavelet decomposition was adopted to get the low frequency approximation image. And then, the improved CV model, which contains the global term, local term and the regularization term, was utilized to segment the low frequency approximation image, so as to obtain the coarse image segmentation result. Finally, the coarse segmentation result was interpolated into the fine scale as an initial contour, and the improved CV model was utilized again to get the fine scale segmentation result. Experimental results show that our method can segment low contrast images and/or inhomogeneous intensity images more effectively than traditional level set methods.
机译:本文提出了一种基于改进的CHAN-VESE(CV)模型和小波变换的一种图像分割方法。首先,采用单级小波分解来获得低频近似图像。然后,利用包含全局术语,局长术语和正则化术语的改进的CV模型来分段为低频近似图像,以便获得粗略图像分段结果。最后,将粗略分割结果插入到初始轮廓中的细尺中,并且再次使用改进的CV模型以获得精细的分割结果。实验结果表明,我们的方法可以比传统的水平设定方法更有效地分段低对比度图像和/或不均匀强度图像。

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