Improved generative adversarial networks using the total gradient loss for the resolution enhancement of fluorescence images.
Chong ZhangKun WangYu AnKunshan HeTong TongZhenyu ZhangPublished in: Biomedical optics express (2019)
Because of the optical properties of medical fluorescence images (FIs) and hardware limitations, light scattering and diffraction constrain the image quality and resolution. In contrast to device-based approaches, we developed a post-processing method for FI resolution enhancement by employing improved generative adversarial networks. To overcome the drawback of fake texture generation, we proposed total gradient loss for network training. Fine-tuning training procedure was applied to further improve the network architecture. Finally, a more agreeable network for resolution enhancement was applied to actual FIs to produce sharper and clearer boundaries than in the original images.