论文标题
用epivariant的深度学习成像
Imaging with Equivariant Deep Learning
论文作者
论文摘要
从早期图像处理到现代计算成像,成功的模型和算法都依赖于自然信号的基本属性:对称性。在这里,对称是指信号集的不变性属性,例如翻译,旋转或缩放等转换。对称性也可以以模棱两可的形式纳入深层神经网络中,从而可以进行更多的数据有效学习。尽管近年来端到端的图像分类网络的设计在设计方面取得了重要成就,但计算成像引入了对均值网络解决方案的独特挑战,因为我们通常只通过一些嘈杂的不良条件的前向操作员观察图像本身可能并不是等价的。我们回顾了现象成像的新兴领域,并展示它如何提供改进的概括和新成像机会。在此过程中,我们展示了获取物理学与小组动作之间的相互作用,以及与迭代重建,盲目的压缩感应和自我监督学习之间的联系。
From early image processing to modern computational imaging, successful models and algorithms have relied on a fundamental property of natural signals: symmetry. Here symmetry refers to the invariance property of signal sets to transformations such as translation, rotation or scaling. Symmetry can also be incorporated into deep neural networks in the form of equivariance, allowing for more data-efficient learning. While there has been important advances in the design of end-to-end equivariant networks for image classification in recent years, computational imaging introduces unique challenges for equivariant network solutions since we typically only observe the image through some noisy ill-conditioned forward operator that itself may not be equivariant. We review the emerging field of equivariant imaging and show how it can provide improved generalization and new imaging opportunities. Along the way we show the interplay between the acquisition physics and group actions and links to iterative reconstruction, blind compressed sensing and self-supervised learning.