Image reconstruction is an inverse problem that solves for a computational image based on sampled sensor measurement. Sparsely sampled image reconstruction poses addition challenges due to limited measurements. In this work, we propose an implicit Neural Representation learning methodology with Prior embedding (NeRP) to reconstruct a computational image from sparsely sampled measurements. The method differs fundamentally from previous deep learning-based image reconstruction approaches in that NeRP exploits the internal information in an image prior, and the physics of the sparsely sampled measurements to produce a representation of the unknown subject. No large-scale data is required to train the NeRP except for a prior image and sparsely sampled measurements. In addition, we demonstrate that NeRP is a general methodology that generalizes to different imaging modalities such as CT and MRI. We also show that NeRP can robustly capture the subtle yet significant image changes required for assessing tumor progression.
翻译:图像重建是一个基于抽样传感器测量的计算图像的反向问题。 粗略抽样图像重建由于测量有限而带来了额外的挑战。 在这项工作中,我们建议采用隐性神经代表制学习方法, 与前嵌入( NERP) 一起从稀有抽样测量中重建计算图像。 这种方法与以前的深层次基于学习的图像重建方法有根本的不同, NERP 之前在图像中利用内部信息, 以及稀有抽样测量的物理原理来代表未知主题。 不需要大规模数据来培训 NERP 。 此外, 我们证明 NERP 是一种一般性方法, 概括了CT 和 MRI 等不同的图像模式。 我们还表明 NERP 可以有力地捕捉到评估肿瘤进展所需的微妙但重要的图像变化。