Quan Yuhui, Qin Xinran, Pang Tongyao, Ji Hui
IEEE Trans Pattern Anal Mach Intell. 2024 Jul;46(7):4866-4879. doi: 10.1109/TPAMI.2024.3359087. Epub 2024 Jun 5.
Image reconstruction from incomplete measurements is one basic task in imaging. While supervised deep learning has emerged as a powerful tool for image reconstruction in recent years, its applicability is limited by its prerequisite on a large number of latent images for model training. To extend the application of deep learning to the imaging tasks where acquisition of latent images is challenging, this article proposes an unsupervised deep learning method that trains a deep model for image reconstruction with the access limited to measurement data. We develop a Siamese network whose twin sub-networks perform reconstruction cooperatively on a pair of complementary spaces: the null space of the measurement matrix and the range space of its pseudo inverse. The Siamese network is trained by a self-supervised loss with three terms: a data consistency loss over available measurements in the range space, a data consistency loss between intermediate results in the null space, and a mutual consistency loss on the predictions of the twin sub-networks in the full space. The proposed method is applied to four imaging tasks from different applications, and extensive experiments have shown its advantages over existing unsupervised solutions.
从不完整测量中进行图像重建是成像中的一项基本任务。虽然近年来监督深度学习已成为图像重建的强大工具,但其适用性受到模型训练需要大量潜在图像这一前提条件的限制。为了将深度学习的应用扩展到获取潜在图像具有挑战性的成像任务中,本文提出了一种无监督深度学习方法,该方法在仅能访问测量数据的情况下训练用于图像重建的深度模型。我们开发了一个连体网络,其孪生子网在一对互补空间上协同执行重建:测量矩阵的零空间及其伪逆的值域。连体网络通过具有三项的自监督损失进行训练:值域中可用测量值上的数据一致性损失、零空间中中间结果之间的数据一致性损失以及全空间中孪生子网预测的相互一致性损失。所提出的方法应用于来自不同应用的四项成像任务,大量实验表明其优于现有的无监督解决方案。