Image reconstruction using deep learning algorithms offers improved reconstruction quality and lower reconstruction time than classical compressed sensing and model-based algorithms. Unfortunately, clean and fully sampled ground-truth data to train the deep networks is often unavailable in several applications, restricting the applicability of the above methods. We introduce a novel metric termed the ENsemble Stein's Unbiased Risk Estimate (ENSURE) framework, which can be used to train deep image reconstruction algorithms without fully sampled and noise-free images. The proposed framework is the generalization of the classical SURE and GSURE formulation to the setting where the images are sampled by different measurement operators, chosen randomly from a set. We evaluate the expectation of the GSURE loss functions over the sampling patterns to obtain the ENSURE loss function. We show that this loss is an unbiased estimate for the true mean-square error, which offers a better alternative to GSURE, which only offers an unbiased estimate for the projected error. Our experiments show that the networks trained with this loss function can offer reconstructions comparable to the supervised setting. While we demonstrate this framework in the context of MR image recovery, the ENSURE framework is generally applicable to arbitrary inverse problems.
翻译:利用深层学习算法进行图像重建,比传统压缩感测和基于模型的算法,可以提高重建质量,缩短重建时间。 不幸的是,在几种应用中,往往无法获得用于培训深层网络的清洁和完全抽样的地面真实数据,限制了上述方法的适用性。我们引入了名为“ENsemble Stein的无偏见风险估计(ENSureble Stein的无偏见风险估计(ENSURE)框架)”的新颖指标,该指标可用于在没有完全抽样和无噪音图像的情况下培训深层图像重建算法。拟议框架是将古典SURI和GSURE的配方与由不同测量操作者抽取图像的场景进行概括化,从一组中随机选择。我们评估GSURE损失功能对采样模式的期望,以获得ENSURE损失函数。我们表明,这种损失是对真实的中平均误差的不偏袒性估计,为GSURE提供了更好的替代方法,它只能对预测错误作出公正的估计。我们的实验表明,经过这种损失函数训练的网络可以提供与监督的设置相类似的重建。虽然我们在MSURE框架中展示了在恢复过程中的任意的问题。