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Preliminary study of total variation noise reduction algorithm with high-energy industrial X-ray imaging system in nondestructive testing field

机译:无损检测场中高能工业X射线成像系统总变化降噪算法的初步研究

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Over the past years, many studies have evaluated the performance of nondestructive testing high-energy X-ray imaging methods. In these high-energy industrial X-ray imaging systems, the noise is very important when accurately assessing the nondestructive analysis of faults inside the object volume. A common way to improve the noise performance is the total variation (TV) noise reduction algorithm. Thus, the purpose of this study is to establish a high-energy industrial X-ray imaging system using 450?kVp energy and to confirm the feasibility of our designed TV noise reduction algorithm. We used an X-ray generator (including source, power supply, and cooler) and a flat panel detector made of an amorphous silicon material. In addition, we acquired the X-ray image for a battery and an air pump and then applied our designed TV noise reduction algorithm to these images. To evaluate the image performance, we used normalized noise power spectrum (NNPS), contrast to noise ratio (CNR), and coefficient of variation (COV). According to the NNPS result, the noise performance of our method was improved compared to conventional noise reduction methods. In addition, the CNR of our TV noise reduction algorithm was 1.58, 1.30, and 1.26 times greater than that achieved for the noisy image, median filter and Wiener filter, respectively. We also acquired excellent COV results for the high-energy X-ray imaging system (about 1.93 times higher than that of the noisy image). Our results suggest that a TV noise reduction algorithm can be constructed with an improved image performance in high-energy industrial X-ray imaging systems.
机译:在过去几年中,许多研究已经评估了非破坏性测试高能X射线成像方法的性能。在这些高能工业X射线成像系统中,当准确评估物体体积内的故障的非破坏性分析时,噪声非常重要。提高噪声性能的常见方法是总变化(TV)降噪算法。因此,本研究的目的是使用450 kVP能量建立高能工业X射线成像系统,并确认我们设计的电视降噪算法的可行性。我们使用了X射线发生器(包括源,电源和冷却器)和由非晶硅材料制成的平板检测器。此外,我们获得了电池和空气泵的X射线图像,然后将我们设计的电视降噪算法应用于这些图像。为了评估图像性能,我们使用归一化噪声功率谱(NNP),与噪声比(CNR)对比度和变异系数(COV)。根据NNPS结果,与常规降噪方法相比,我们的方法的噪声性能得到改善。此外,我们的电视降噪算法的CNR分别为1.58,1.30和1.26倍,分别为嘈杂图像,中值滤波器和维纳滤波器实现。我们还获得了高能X射线成像系统的优秀COV结果(比嘈杂图像高约1.93倍)。我们的结果表明,在高能工业X射线成像系统中可以通过改进的图像性能构建电视降噪算法。

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