论文标题
卷积分析操作员通过迭代神经网络的端到端培训学习
Convolutional Analysis Operator Learning by End-To-End Training of Iterative Neural Networks
论文作者
论文摘要
稀疏性概念已广泛应用于图像重建中的正则化。通常,稀疏转换要么是在地面图像上预先训练的,要么在重建过程中受到适应训练。因此,学习算法旨在最大程度地减少编码转换所需属性的某些目标函数。但是,此过程忽略了随后采用的重建算法以及负责图像形成过程的物理模型。迭代神经网络(包含物理模型)可以克服这些问题。在这项工作中,我们演示了如何通过迭代神经网络的端到端培训有效地学习卷积稀疏过滤器。我们评估了我们在非科学家2D心脏Cine MRI示例上的方法,并表明所获得的过滤器比通过脱钩的预训练获得的过滤器更适合相应的重建算法。
The concept of sparsity has been extensively applied for regularization in image reconstruction. Typically, sparsifying transforms are either pre-trained on ground-truth images or adaptively trained during the reconstruction. Thereby, learning algorithms are designed to minimize some target function which encodes the desired properties of the transform. However, this procedure ignores the subsequently employed reconstruction algorithm as well as the physical model which is responsible for the image formation process. Iterative neural networks - which contain the physical model - can overcome these issues. In this work, we demonstrate how convolutional sparsifying filters can be efficiently learned by end-to-end training of iterative neural networks. We evaluated our approach on a non-Cartesian 2D cardiac cine MRI example and show that the obtained filters are better suitable for the corresponding reconstruction algorithm than the ones obtained by decoupled pre-training.