Learning spatially adaptive sparsity level maps for arbitrary convolutional dictionaries
AI 摘要
提出一种基于神经网络的自适应稀疏度图卷积字典学习方法,增强了解释性和鲁棒性。
主要贡献
- 提出改进的网络结构和训练策略,实现滤波器置换不变性
- 允许在推理时更换卷积字典
- 在低场MRI重建中表现出更好的鲁棒性和性能
方法论
通过神经网络推断空间自适应稀疏度图,嵌入数据驱动信息到基于模型的卷积字典正则化中。
原文摘要
State-of-the-art learned reconstruction methods often rely on black-box modules that, despite their strong performance, raise questions about their interpretability and robustness. Here, we build on a recently proposed image reconstruction method, which is based on embedding data-driven information into a model-based convolutional dictionary regularization via neural network-inferred spatially adaptive sparsity level maps. By means of improved network design and dedicated training strategies, we extend the method to achieve filter-permutation invariance as well as the possibility to change the convolutional dictionary at inference time. We apply our method to low-field MRI and compare it to several other recent deep learning-based methods, also on in vivo data, in which the benefit for the use of a different dictionary is showcased. We further assess the method's robustness when tested on in- and out-of-distribution data. When tested on the latter, the proposed method suffers less from the data distribution shift compared to the other learned methods, which we attribute to its reduced reliance on training data due to its underlying model-based reconstruction component.