BiologyNature Communications
Deep learning enables reference-free isotropic super-resolution for volumetric fluorescence microscopy
H. Park, M. Na, et al.
Discover how cutting-edge deep-learning techniques can enhance volumetric fluorescence microscopy! This innovative research conducted by Hyoungjun Park, Myeongsu Na, Bumju Kim, Soohyun Park, Ki Hean Kim, Sunghoe Chang, and Jong Chul Ye presents a unique super-resolution method that significantly improves axial resolution using only a single 3D image stack.
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