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Weld defect features extraction on digital radiographic image using Chan-Vese model

机译:使用Chan-VESE模型对数字射线影视图像提取的焊接缺陷特征

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Segmentation is the most important and critical task that widely used in image processing. In this study, Level set based on Chan-Vese model is explored and applied to detect weld defect on digital radiographic image. Region of interest (ROI) from original image is defined to reduce the area of image been processed. The ROI image is smoothen using median 3×3 filter to improve its quality for better detection result. Then, the defect in the ROI image is segmented using Chan-Vese model with two different size of rectangle as initial contour for initialization. The algorithm for the whole processes is implemented using MATLAB R2009a. From the detection result, its features are calculated that have been calibrated to absolute units (mm) from pixel units. The application of segmentation technique such as level set method able to assist radiographer in detecting and defining the properties of the defect accurately.
机译:分割是在图像处理中广泛使用的最重要和最关键的任务。 在本研究中,探索了基于Chan-Vese模型的级别设置,并应用于在数字放射线图像上检测焊接缺陷。 从原始图像中的感兴趣区域(ROI)被定义为减少处理的图像区域。 使用中位3&#X00D7的ROI图像是平滑的; 3过滤器,以提高其质量以获得更好的检测结果。 然后,使用Chan-VESE模型进行ROI图像中的缺陷,其具有两个不同大小的矩形作为初始轮廓以进行初始化。 使用MATLAB R2009A实现整个过程的算法。 根据检测结果,计算其特征,其特征已经从像素单元校准到绝对单位(mm)。 分割技术的应用诸如水平集方法中的应用能够在探测和定义缺陷的检测和定义缺陷的性能方面的应用。

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