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首页> 外文期刊>Russian Journal of Nondestructive Testing >The performance of some implicit region-based active contours in segmenting and restoring welding radiographic images
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The performance of some implicit region-based active contours in segmenting and restoring welding radiographic images

机译:在分割和恢复焊接射线图像中的一些基于区域的主动轮廓的性能的性能

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摘要

Several domains are based on image processing and analysis. One of them is the radiographic inspection which is used in Non Destructive Testing (NDT). Active contours, snakes or deformable models are powerful techniques in image segmentation and restoration. According to the term related to the input data (image to be treated) those functionals are ranked on two categories: edge-based models and region-based models. Previous studies point out the advantages of the regionbased models over edge-based models. In this paper, we discuss and we summarize the strengths and weaknesses of four implicit region-based active contour models named: Piecewise Constant PC, Piecewise Smooth PS, Local Binary Fitting LBF and Global Local fitting energy GLF. After performing several experiments, we have concluded that all the models perform well with homogeneous images. On the contrary when images are strongly inhomogeneous, the models based on global (PC) or local (LBF) statistic intensity fail to segment such images. The PS model with its great advantage in preserving the contours has, as a drawback, the high CPU time consuming. The combination of local and global statistic image intensity gives to the GLF model the ability to better deal with such images in less CPU time.
机译:若干域基于图像处理和分析。其中一个是用于非破坏性测试(NDT)的放射线检查。活动轮廓,蛇或可变形模型是图像分割和恢复中的强大技术。根据与输入数据相关的术语(要处理的图像),这些功能在两类中排名:基于边缘的模型和基于区域的模型。以前的研究指出了基于边缘模型的区域基础模型的优势。在本文中,我们讨论并概述了名为的四个隐式区域的活跃轮廓模型的优势和缺点,命名为:分段恒定PC,分段平滑PS,局部二进制拟合LBF和全球局部拟合能源GLF。在进行几个实验后,我们已经得出结论,所有模型都与同类图像表现良好。相反,当图像强烈不均匀时,基于全局(PC)或本地(LBF)统计强度的模型无法分割此类图像。 PS模型在保留轮廓时具有很大的优势,作为缺点,高CPU耗时。本地和全局统计图像强度的组合使GLF模型能够更好地处理在较少的CPU时间中的这种图像。

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