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A robust diffusion approach to image segmentation based on Curvelet enhancement

机译:基于Curvelet增强的鲁棒扩散图像分割方法

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In this paper, we present a new segmentation method in which Curvelet transform(CT) acts as an edge enhancement tool to modify diffusion marching. Firstlyimage segmentation is modeled via CT boundary emphasizing and lorentzian-function based diffusion. By means of multi-scale decomposition and multi-directional projection, CT detects pixels which are not obvious at pixel-level, but detectable by integrating over many pixels. Furthermore, projections inside Curvelet calculation directly lead to noise averaging, thus CT could be employed to retain weak edges and remove noises simultaneously when diffusion evolve to a certain extent. Secondly, a criterion is proposed to seek the appropriate moment for CT adoption during diffusion. It is fulfilled by analyzing histogram maxima every thirty iterations. If the count reduced between 2 maxima calculations arrives a threshold, CT will be performed to prevent edge disappearing. Thirdly, segmentation quality is measured to determine the cessation of diffusion. We carry out segmentation at the tune when CT is completed or every fifty iterations finished. The partitioning numbers between two adjacent segmentations are compared to judge whether diffusion should be ceased. Experiments show that our approach takes CT's advantages of edge-preserving and denoising, it yields an efficient segmentation than the classical PDE does.
机译:在本文中,我们提出了一种新的分割方法,其中Curvelet变换(CT)作为边缘增强工具来修改扩散行进。首先,通过CT边界强调和基于洛伦兹函数的扩散对图像分割进行建模。通过多尺度分解和多方向投影,CT可以检测在像素级别上不明显但可以通过集成多个像素进行检测的像素。此外,Curvelet计算内部的投影直接导致噪声平均,因此当扩散在一定程度上发展时,CT可用于保留弱边缘并同时消除噪声。其次,提出了寻找扩散过程中采用CT的适当时刻的标准。每三十次迭代分析一次直方图最大值即可实现此目的。如果在两次最大值计算之间减少的计数达到阈值,则将执行CT以防止边缘消失。第三,测量分割质量以确定是否停止扩散。当CT结束或每五十次迭代完成时,我们会立即进行分割。比较两个相邻分段之间的划分数,以判断是否应停止扩散。实验表明,我们的方法利用了CT在边缘保留和去噪方面的优势,与传统的PDE相比,它可以进行有效的分割。

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