A Novel Transmission Reconstruction Algorithm for Radioactive Drum Characterization

Hui Yang, Hao Zhou, Bing-feng Dong, Wentao Zhou, W. Gu, Xinyu Zhang, Qin Lei, Chenyu Shan, Dezhong Wang
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引用次数: 1

Abstract

The accuracy of tomographic gamma scanning transmission reconstruction is a critical factor in reconstructing the activity of a radioactive drum. Traditional reconstruction algorithms produce severe grid artifacts and a high level of noise, thereby increasing the reconstruction error for both the density map and the activity. This paper proposes a novel algorithm for transmission reconstruction by combining maximum-likelihood expectation maximization and a convolutional neural network (CNN). Our experimental results indicate that the proposed reconstruction algorithm is capable of significantly reducing measurement errors, increasing spatial resolution while also eliminating grid artifacts, and being sufficiently robust when dealing with a noisy input image. The mean squared error of the output image decreased by 52.70% compared with the conventional reconstruction method, and the peak signal-to-noise ratio and structural similarity index improved by 21.89% and 17.33%, respectively. The spatial resolution was improved by 28 times, which demonstrates that CNN is a potentially useful new method for radioactive waste drum transmission image reconstruction.
一种新的辐射鼓表征传输重建算法
层析伽玛扫描透射重建的精度是重建放射性磁鼓活度的关键因素。传统的重建算法会产生严重的网格伪影和高水平的噪声,从而增加密度图和活动的重建误差。将极大似然期望最大化与卷积神经网络(CNN)相结合,提出了一种新的传输重构算法。实验结果表明,所提出的重建算法能够显著降低测量误差,提高空间分辨率,同时消除网格伪像,并且在处理噪声输入图像时具有足够的鲁棒性。与传统重建方法相比,输出图像的均方误差降低了52.70%,峰值信噪比和结构相似度指标分别提高了21.89%和17.33%。空间分辨率提高了28倍,证明了CNN是一种潜在的有用的放射性废桶传输图像重建新方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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