Recent years have seen significant progress in the application of deep learning techniques to fluorescence microscopy imaging. These advancements aim to improve the quality and reliability of image restoration.
Despite these improvements, challenges remain in enhancing the fidelity of image restoration networks. Ensuring robustness against fluorescence noise continues to be a critical area of focus for researchers.
The ongoing work in this field suggests a promising future for fluorescence microscopy, with the potential for more accurate and reliable imaging outcomes.