论文标题

从不完整的逆问题测量中学习无监督的学习

Unsupervised Learning From Incomplete Measurements for Inverse Problems

论文作者

Tachella, Julián, Chen, Dongdong, Davies, Mike

论文摘要

在许多现实世界中,仅可用于培训不完整的测量数据,这可能会引起学习重建功能的问题。实际上,通常不可能使用固定的不完整测量过程学习,因为测量算子的无信息中没有信息。可以通过使用来自多个操作员的测量来克服此限制。尽管这个想法已成功地应用于各种应用中,但仍缺乏对学习条件的精确表征。在本文中,我们通过提出必要和充分的条件来学习重建所需的基本信号模型,以指示不同测量运算符的数量,每个操作员的测量值,模型的维度和信号尺寸之间的相互作用。此外,我们提出了一个新颖且概念上简单的无监督学习损失,这只需要访问不完整的测量数据,并在验证足够的条件时与监督学习的表现达到相同的表现。我们验证了理论界限,并通过一系列关于各种成像反问题的实验,例如加速磁共振成像,压缩感测和图像介入的一系列实验,证明了所提出的无监督损失的优势。

In many real-world inverse problems, only incomplete measurement data are available for training which can pose a problem for learning a reconstruction function. Indeed, unsupervised learning using a fixed incomplete measurement process is impossible in general, as there is no information in the nullspace of the measurement operator. This limitation can be overcome by using measurements from multiple operators. While this idea has been successfully applied in various applications, a precise characterization of the conditions for learning is still lacking. In this paper, we fill this gap by presenting necessary and sufficient conditions for learning the underlying signal model needed for reconstruction which indicate the interplay between the number of distinct measurement operators, the number of measurements per operator, the dimension of the model and the dimension of the signals. Furthermore, we propose a novel and conceptually simple unsupervised learning loss which only requires access to incomplete measurement data and achieves a performance on par with supervised learning when the sufficient condition is verified. We validate our theoretical bounds and demonstrate the advantages of the proposed unsupervised loss compared to previous methods via a series of experiments on various imaging inverse problems, such as accelerated magnetic resonance imaging, compressed sensing and image inpainting.

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