Research on OCT Image Processing Based on Deep Learning

Optical coherence tomography (OCT) is a new imaging technique that can realize non-invasive tomography of the measured object. Deep Learning is one of Machine Learning algorithms that advanced in computer vision nowadays. OCT image processing based on deep learning is currently a hot research topic. This paper reviews the research progress of OCT image processing technology based on deep learning, including the research of deep learning in OCT image recognition, image segmentation, image enhancement and denoising. Some future research directions of OCT image processing based on deep learning are given in the end.

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