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Toward Generating Synthetic CT Volumes using a 3D-Conditional Generative Adversarial Network

机译:朝向使用3D条件生成的对抗性网络产生合成CT卷

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Network (cGAN) architecture that is capable of generating 3D Computed Tomography scans in voxels from noisy and/or pixelated approximations and with the potential to generate full synthetic 3D scan volumes. We believe conditional cGAN to be a tractable approach to generate 3D CT volumes, even though the problem of generating full resolution deep fakes is presently impractical due to GPU memory limitations. We present results for autoencoder, denoising, and depixelating tasks which are trained and tested on two novel COVID19 CT datasets. Our evaluation metrics, Peak Signal to Noise ratio (PSNR) range from 12.53 - 46.46 dB, and range from 0.89 to 1.
机译:网络(CGAN)能够从嘈杂和/或像素化近似的体素生成3D计算机断层摄影扫描的架构,并且具有产生完整的合成3D扫描卷的可能性。 我们认为有条件的CGAN是一种易解方法来产生3D CT卷的方法,即使产生全部分辨率的深度假迎板的问题由于GPU内存限制而言目前是不切实际的。 我们为两种新型Covid19 CT数据集进行培训和测试的AutoEncoder,去噪和透析任务的结果。 我们的评估指标,峰值信号到噪声比(PSNR)的范围为12.53-46.46 dB,范围为0.89至1。

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