Structured illumination microscopy (SIM) has emerged as a powerful technique, surpassing the limitations imposed by optical diffraction and providing remarkable enhancements in both lateral and axial resolution compared with traditional diffraction-limited microscopy. However, it does come with certain limitations, including the need for a complex optical setup, extensive image acquisition, and computationally intensive post-processing. Motivated by the advancements in deep-learning-based super-resolution techniques, we propose an original three-dimensional (3D) representative learning algorithm called the transformer-based generative adversarial network (TransGAN), which can accurately predict corresponding aberrations through a combination of 17 mixed Zernike modes. Our approach outperforms state-of-the-art algorithms in various cellular structures, achieving impressive results with a mean square error of |
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3D image processing
3D modeling
Point spread functions
Feature extraction
Transformers
Optical engineering
Zernike polynomials