基于卷积神经网络的x射线计算机断层图像几何伪影评价

Mingwan Zhu, Linlin Zhu, Yu Han, Xiaoqi Xi, Lei Li, Bin Yan
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引用次数: 0

摘要

计算机断层扫描(CT)在许多领域都有应用。实际CT系统的实际不对准会在重建图像中产生几何伪影,严重降低图像质量。几何伪影评价为后续的几何伪影校正提供了可靠的依据。图像的一些特征,如熵和锐度,通常用于测量几何伪像的严重程度,但它们在通用性和准确性方面受到限制。卷积神经网络(CNN)具有优异的图像特征学习能力,在图像处理中得到了很好的应用。本文探讨了一种适合于CT图像中几何伪影评价的网络结构。我们选择了三种常用的网络LeNet-5, VGG16和AlexNet。利用仿真结果和实际扫描结果构建了三种不同类型的图像数据集。三个网络分别在三种数据集上进行训练和测试。实验结果表明,这三种CNN模型都能评估CT图像中是否存在几何伪影。AlexNet网络的分类评价性能最好,平均分类准确率为0.961,平均损失最小,训练时间最短。
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Geometric Artifact Evaluation of X-ray Computed Tomography Images Based on Convolutional Neural Network
Computed Tomography (CT) has been used in many fields. Practical misalignment of the actual CT system causes geometric artifacts in the reconstructed images, which severely degrades image quality. Geometric artifact evaluation provides a reliable basis for subsequent geometric artifact correction. Some characteristics of images, such as entropy and sharpness, are often used to measure the severity of geometric artifacts, but they are limited in generality and accuracy. Convolutional neural network (CNN) has excellent image feature learning capabilities and is well used in image processing. This paper explores the network structure suitable for the evaluation of geometric artifacts in CT images. We select three commonly used networks LeNet-5, VGG16 and AlexNet. The datasets of three kinds of phantoms are constructed using simulation and actual scanning results. The three networks are trained and tested separately on the three kinds of datasets. Experimental results show that all three CNN models can evaluate the existence of geometric artifacts in CT images. The AlexNet network achieves the best classification evaluation performance with an average classification accuracy of 0.961, with the smallest average loss and the shortest training time.
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