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Removing ring artifacts in CBCT images via generative adversarial networks with unidirectional relative total variation loss

机译:通过生成的对抗网络在CBCT图像中删除环形伪影,具有单向相对总变化损耗

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摘要

Cone beam computed tomography (CBCT) is an important tool for clinical diagnosis and many industrial applications. However, ring artifacts usually appear in CBCT images, due to device responding inconsistence. This paper designs a generative adversarial network (GAN) to remove ring artifacts and meanwhile to retain important texture details in CBCT images. This method firstly transforms ring artifacts in Cartesian coordinates to stripe artifacts in polar coordinates, which is very helpful for removing ring artifacts. Then, we design a new loss function for GAN, including three parts: unidirectional relative total variation loss, perceptual loss and adversarial loss. Further, inspired by super-resolution generative adversarial networks, we use very deep residual networks for both generator and discriminator. Experimental results show that the proposed method is more effective for ring artifacts removal, compared to our baseline and some traditional methods.
机译:锥梁计算断层扫描(CBCT)是临床诊断和许多工业应用的重要工具。 然而,由于设备响应不一致,环形伪影通常出现在CBCT图像中。 本文设计了一种生成的对抗性网络(GaN),以删除环形伪像,同时在CBCT图像中保留重要的纹理细节。 该方法首先将笛卡尔坐标的环形伪像转换为极性坐标的条纹伪像,这对于移除环形伪影非常有用。 然后,我们为GaN设计了一种新的损失功能,包括三个部分:单向相对总变异损失,感性丧失和对抗性损失。 此外,通过超级分辨率的生成对抗网络的启发,我们对发电机和鉴别器使用非常深的剩余网络。 实验结果表明,与我们的基线和一些传统方法相比,该方法对振铃伪影术更有效。

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