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Some Investigations on Robustness of Deep Learning in Limited Angle Tomography

机译:有限角度层析成像中深度学习鲁棒性的一些研究

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In computed tomography, image reconstruction from an insufficient angular range of projection data is called limited angle tomography. Due to missing data, reconstructed images suffer from artifacts, which cause boundary distortion, edge blurring, and intensity biases. Recently, deep learning methods have been applied very successfully to this problem in simulation studies. However, the robustness of neural networks for clinical applications is still a concern. It is reported that most neural networks are vulnerable to adversarial examples. In this paper, we aim to investigate whether some perturbations or noise will mislead a neural network to fail to detect an existing lesion. Our experiments demonstrate that the trained neural network, specifically the U-Net, is sensitive to Poisson noise. While the observed images appear artifact-free, anatomical structures may be located at wrong positions, e.g. the skin shifted by up to 1cm. This kind of behavior can be reduced by retraining on data with simulated Poisson noise. However, we demonstrate that the retrained U-Net model is still susceptible to adversarial examples. We conclude the paper with suggestions towards robust deep-learning-based reconstruction.
机译:在计算机断层摄影中,从投影数据的不足角度范围进行图像重建称为有限角度断层摄影。由于缺少数据,重建的图像会出现伪影,从而导致边界失真,边缘模糊和强度偏差。最近,深度学习方法已经非常成功地应用于模拟研究中的该问题。但是,神经网络在临床应用中的鲁棒性仍然是一个问题。据报道,大多数神经网络容易受到对抗性例子的攻击。在本文中,我们旨在研究某些干扰或噪声是否会误导神经网络以致无法检测到现有病变。我们的实验表明,训练有素的神经网络,特别是U-Net,对泊松噪声敏感。虽然观察到的图像看起来没有伪影,但解剖结构可能位于错误的位置,例如皮肤最多移位1厘米。可以通过对具有模拟Poisson噪声的数据进行再训练来减少这种行为。但是,我们证明了经过重新训练的U-Net模型仍然容易受到对抗性示例的影响。我们以对基于深度学习的强大重建的建议作为本文的结尾。

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