| Literature DB >> 31845537 |
Huangxuan Zhao1,2,3, Ziwen Ke4,5, Ningbo Chen1, Songjian Wang2,3, Ke Li1,2,3, Lidai Wang6, Xiaojing Gong1, Wei Zheng1, Liang Song1, Zhicheng Liu2,3, Dong Liang4, Chengbo Liu1.
Abstract
Deconvolution is the most commonly used image processing method in optical imaging systems to remove the blur caused by the point-spread function (PSF). While this method has been successful in deblurring, it suffers from several disadvantages, such as slow processing time due to multiple iterations required to deblur and suboptimal in cases where the experimental operator chosen to represent PSF is not optimal. In this paper, we present a deep-learning-based deblurring method that is fast and applicable to optical microscopic imaging systems. We tested the robustness of proposed deblurring method on the publicly available data, simulated data and experimental data (including 2D optical microscopic data and 3D photoacoustic microscopic data), which all showed much improved deblurred results compared to deconvolution. We compared our results against several existing deconvolution methods. Our results are better than conventional techniques and do not require multiple iterations or pre-determined experimental operator. Our method has several advantages including simple operation, short time to compute, good deblur results and wide application in all types of optical microscopic imaging systems. The deep learning approach opens up a new path for deblurring and can be applied in various biomedical imaging fields.Keywords: convolutional neural network; deblur method; deep learning; optical microscopic imaging systems; photoaoustic image
Mesh:
Year: 2020 PMID: 31845537 DOI: 10.1002/jbio.201960147
Source DB: PubMed Journal: J Biophotonics ISSN: 1864-063X Impact factor: 3.207