Compensating scarce measurements by inferring them from computational models is a way to address ill-posed inverse problems. We tackle Limited Angle Tomography by completing the set of acquisitions using a generative model and prior-knowledge about the scanned object. Using a Generative Adversarial Network as model and Computer-Assisted Design data as shape prior, we demonstrate a quantitative and qualitative advantage of our technique over other state-of-the-art methods. Inferring a substantial number of consecutive missing measurements, we offer an alternative to other image inpainting techniques that fall short of providing a satisfying answer to our research question: can X-Ray exposition be reduced by using generative models to infer lacking measurements?
翻译:通过从计算模型中推断稀缺测量来补偿稀缺测量,是解决不正确反向问题的一种方法。我们通过利用基因模型和对扫描物体的先知完成一套获取方法来解决有限光谱成像学问题。我们利用基因反转网络作为模型和计算机辅助设计数据作为先前的形状,显示了我们的技术相对于其他最新方法在数量和质量上的优势。我们推断了大量连续缺失的测量方法,我们提供了一种替代其他图像涂色技术的替代方法,这些方法没有提供令人满意的答案来回答我们的研究问题:利用基因模型推断缺少测量方法,能否减少X射线图解?