Akçakaya Mehmet, Yaman Burhaneddin, Chung Hyungjin, Ye Jong Chul
Department of Electrical and Computer Engineering, and Center for Magnetic Resonance Research, University of Minnesota, USA.
Department of Bio and Brain Engineering, Korea Advanced Inst. of Science and Technology (KAIST), Korea.
IEEE Signal Process Mag. 2022 Mar;39(2):28-44. doi: 10.1109/msp.2021.3119273. Epub 2022 Feb 24.
Recently, deep learning approaches have become the main research frontier for biological image reconstruction and enhancement problems thanks to their high performance, along with their ultra-fast inference times. However, due to the difficulty of obtaining matched reference data for supervised learning, there has been increasing interest in unsupervised learning approaches that do not need paired reference data. In particular, self-supervised learning and generative models have been successfully used for various biological imaging applications. In this paper, we overview these approaches from a coherent perspective in the context of classical inverse problems, and discuss their applications to biological imaging, including electron, fluorescence and deconvolution microscopy, optical diffraction tomography and functional neuroimaging.
近年来,深度学习方法凭借其高性能以及极快的推理速度,已成为生物图像重建与增强问题的主要研究前沿。然而,由于难以获得用于监督学习的匹配参考数据,对无需配对参考数据的无监督学习方法的兴趣与日俱增。特别是,自监督学习和生成模型已成功应用于各种生物成像应用。在本文中,我们从经典逆问题的背景下以连贯的视角概述这些方法,并讨论它们在生物成像中的应用,包括电子显微镜、荧光显微镜和去卷积显微镜、光学衍射断层扫描和功能神经成像。