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Bayesian Image Quality Transfer with CNNs: Exploring Uncertainty in dMRI Super-Resolution

机译:贝叶斯图像质量转移与CNNS:探索DMRI超分辨率的不确定性

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In this work, we investigate the value of uncertainty modelling in 3D super-resolution with convolutional neural networks (CNNs). Deep learning has shown success in a plethora of medical image transformation problems, such as super-resolution (SR) and image synthesis. However, the highly ill-posed nature of such problems results in inevitable ambiguity in the learning of networks. We propose to account for intrinsic uncertainty through a per-patch heteroscedastic noise model and for parameter uncertainty through approximate Bayesian inference in the form of variational dropout. We show that the combined benefits of both lead to the state-of-the-art performance SR of diffusion MR brain images in terms of errors compared to ground truth. We further show that the reduced error scores produce tangible benefits in downstream tractography. In addition, the probabilistic nature of the methods naturally confers a mechanism to quantify uncertainty over the super-resolved output. We demonstrate through experiments on both healthy and pathological brains the potential utility of such an uncertainty measure in the risk assessment of the super-resolved images for subsequent clinical use.
机译:在这项工作中,我们调查3D超分辨率的不确定性建模的价值与卷积神经网络(CNNS)。深入学习在诸如超分辨率(SR)和图像合成之类的诸如过多的医学图像转换问题中取得了成功。然而,这种问题的高度恶心的性质导致网络学习中不可避免的模糊性。我们建议通过每种补丁异源噪声模型和通过近似贝叶斯推断以变分差的形式来解释内在的不确定性。我们表明,与地面真理相比,导致扩散MR脑形象的最先进性能SR的综合效益。我们进一步表明,减少的错误分数在下游牵引中产生了有形的益处。此外,该方法的概率性质自然地赋予了量化超出分辨输出的不确定性的机制。我们通过对健康和病理脑的实验证明这种不确定性在超分辨图像的风险评估中进行这种不确定性测量的潜在效用,以进行随后的临床用途。

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