...
首页> 外文期刊>Journal of Nondestructive Evaluation >A Novel Method for Predicting Pixel Value Distribution Non-uniformity Due to Heel Effect of X-ray Tube in Industrial Digital Radiography Using Artificial Neural Network
【24h】

A Novel Method for Predicting Pixel Value Distribution Non-uniformity Due to Heel Effect of X-ray Tube in Industrial Digital Radiography Using Artificial Neural Network

机译:一种新的方法,用于预测像素值分布的不均匀性,由于人工神经网络工业数字射线照相中X射线管的跟随效应

获取原文
获取原文并翻译 | 示例

摘要

The heel effect in X-ray radiation imaging systems causes a non-uniform radiation distribution on the imaging plane. In this research, a novel method was developed for predicting the pixel value's non-uniformity due to the heel effect of X-ray tube on the imaging plane using Monte Carlo N particle (MCNP) simulation code and artificial neural network (ANN). At first, an industrial X-ray tube and a computed radiography (CR) image plate were simulated using MCNP. Then, the simulation procedure was benchmarked with an experiment. In the next step, nine images were obtained from the simulation for nine different tube voltages in the range of 100-300 kV. Furthermore, some pixels with tangential and polar angles in the range of 0A degrees-20A degrees and of 0A degrees-180A degrees with respect to the centered pixel were chosen from these nine simulated images in order to train the ANN, respectively. The tube voltage, tangential and polar angles of each pixel were used as the three inputs of the ANN and gray value in each pixel was used as the output. After training, the proposed ANN model could predict the gray value of each pixel on the imaging plane with mean relative error of less than 0.23%. In the last step, the predicted gray value difference between the centered pixel and other pixels was calculated. The great advantage of proposed methodology is providing the possibility of predicting the pixel value's non-uniformity due to the heel effect of the X-ray tube on the imaging plane for a wide range of the tube voltages and source to film distances independent of the tube current and exposure time. Although the proposed methodology in this paper was developed for a specific X-ray tube and a CR imaging plate, it can be used for every digital radiography system.
机译:X射线辐射成像系统中的脚跟效应在成像平面上导致非均匀的辐射分布。在该研究中,开发了一种新的方法,用于预测由于X射线管在成像平面上使用蒙特卡罗n粒子(MCNP)仿真码和人工神经网络(ANN)的X射线管的效果而导致的像素值的不均匀性。首先,使用MCNP模拟工业X射线管和计算的射线照相(CR)图像板。然后,模拟程序与实验有基准测试。在下一步骤中,从模拟获得九个不同管电压的九个图像,在100-300kV的范围内。此外,从这些九个模拟图像中选择具有0a-20a度和0a-180a度的0a-20a度和0a-180a度的偏角角的一些像素,以便分别训练ANN。使用每个像素的管电压,切向和极性角度用作每个像素中的ANN和灰度值的三个输入用作输出。在训练之后,所提出的ANN模型可以预测成像平面上每个像素的灰度值,其平均相对误差小于0.23%。在最后一步中,计算以中心像素和其他像素之间的预测灰度值差异。所提出的方法的巨大优点是提供了由于X射线管对成像平面上的X射线管的次曲线的效果来预测像素值的不均匀性的可能性,用于宽范围的管电压和源极独立于管的薄膜距离电流和曝光时间。虽然本文提出的方法是针对特定X射线管和CR成像板开发的,但它可以用于每个数字射线照相系统。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号