基于计算机射线成像的Betatron SEA 7射线图像分割

H. Hamadi, Haidaravi Ardi, Tasih Mulyono, Muhtadan
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引用次数: 0

摘要

射线照相检测通常使用x射线来发现材料中的缺陷或不连续性。SEA 7是新一代产生高能x射线辐射的电子加速器之一。本研究获得了能量为7兆电子伏特的电子感应加速器的图像。采用离散小波变换对图像进行去噪,并用局部阈值分割方法对图像进行分割,以发现图像中的缺陷。Haar和Daubechies是一组小波,其性能在该图像上进行了测试。结果表明,第一分解层次的Daubechies族对降噪效果更好,样本1即不完全穿透缺陷图像的PSNR(峰值信噪比)值为32.62 dB,样本2即缺乏根部穿透缺陷类型的图像的PSNR值为37.15 dB。在分割测试中,经过形态学操作处理后,Niblack的分割性能在样本1和样本2上分别达到了86.65%和68.09%的MMo (Misclassified Area Mutual Overlap)值。第二次局部阈值分割性能,即形态操作处理后的Sauvola,样本1的MMo值为84.97%,样本2的MMo值为52.44%。由于分割所用的窗口超过了裁剪尺寸,因此这两种方法不适合用于射线成像图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Segmentation of Betatron SEA 7 Radiographic Images with Computed Radiography on Steel Specimen
Radiographic testing is carried out to find out defects or discontinuities in a material that generally uses x-rays. SEA 7 is one of the new generations of betatron that produces high-energy x-ray radiation. In this study, an image from betatron with an energy of 7 MeV was obtained. The image is denoised using a discrete wavelet transform and segmented with a local thresholding method to see defects in the radiographic image. The Haar and Daubechies are a family of wavelets whose performance is tested on this image. The results show that the Daubechies family at the first decomposition level is more effective in reducing noise, as shown by the PSNR (Peak Signal to Noise Ratio) value of 32.62 dB for sample 1, namely the image with incomplete penetration defects, and 37.15 dB for sample 2, namely the image with the type of lack of root penetration defect. In the segmentation test, Niblack's segmentation performance after the morphological operation process reached an MMo (Misclassified Area Mutual Overlap) value of 86.65% for sample 1 and 68.09% for sample 2. The second local thresholding segmentation performance, namely Sauvola after the morphological operation process, reached an MMo value of 84.97% for sample 1 and 52.44 % for sample 2. The window used for segmentation exceeds the cropping size, so these two methods are not suitable to be applied on betatron radiographic images.
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