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3D Bone Shape Reconstruction from 2D X-ray Images Using MED Generative Adversarial Network

机译:3D使用MED生成对抗网络的2D X射线图像的骨形重建

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Three-dimensional (3D) objects are always better than two-dimensional (2D) images for visualization. Very delicate information can be detected in 3D objects compared to 2D objects. The human brain can easily infer 3D information by observing 2D objects. But retrieving 3D information from a 2D object is very challenging for machines. For this reason, 3D shape reconstruction is one of the most researched topics in computer vision, deep learning, and medical science. 3D bone shapes are needed for pre-operative surgery planning and visualization. But the conventional methods of generating high-quality 3D bone-shape from 2D images are very time-consuming. This paper proposes a framework of Generative Adversarial Network Medical Generative Adversarial Network (MED-GAN) to generate high-quality 3D bone-shape from 2D images. It generates 3D bone-shape using recent advances in convolution networks and generative adversarial networks. X-ray images are fed to the convolution network which is then converted to a D-dimensional vector by the convolution network. D-dimensional vector is fed to the GAN to reconstruct 3D bone shape.
机译:三维(3D)对象始终优于二维(2D)图像以进行可视化。与2D对象相比,可以在3D对象中检测到非常精致的信息。人类大脑可以通过观察2D对象来容易地推断3D信息。但是从2D对象中检索3D信息对于机器非常具有挑战性。因此,3D形状重建是计算机视觉,深度学习和医学科学中最受研究的主题之一。服用手术计划和可视化需要3D骨骼形状。但是从2D图像产生高质量3D骨形的传统方法非常耗时。本文提出了一种生成的对抗网络医学生成对抗网络(MED-GAN)的框架,从2D图像产生高质量的3D骨骼形状。它使用最近的卷积网络和生成对冲网络产生3D骨骼形状。 X射线图像被馈送到卷积网络,然后通过卷积网络转换为D维矢量。 D尺寸向量被送入GaN以重建3D骨骼形状。

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