In pursuit of high-fidelity waveguide imaging restoration using deep learning algorithms: A review

IF 2.3 4区 计算机科学 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Ruiqi Zhou, Yang Yang, Jiong Xiao, Zihang Liu, Feifei Hao, Jinwei Zeng, Jian Wang
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引用次数: 0

Abstract

Waveguide imaging is considered as one of the most important and widely used techniques in biomedical endoscopic applications. Recently, many attempts have been made to develop ever miniaturised in vivo imaging devices for minimally invasive clinical inspections. However, miniaturisation implies using a smaller optical aperture waveguide, which may introduce pixilation artefacts and pixel-to-pixel distortion to deteriorate overall imaging quality. To overcome the constraints imposed by miniaturised waveguides, the deep learning algorithms can be an effective tool to cure the imaging distortion via post-processing, which already had encouraging results in many scenes of automatic machine-learnt imaging restoration. The authors introduce the waveguide imaging transmission and the restoration algorithms, and then discuss their possible combinations. The results show that the integration of advanced waveguides and optimised algorithms can achieve unprecedented imaging restoration than before. In the future, in order to fill the need for high-quality reconstructed images, we should not only improve ability of software to optimise restoration algorithms but also correspondingly concern hardware progress in waveguides. The practical sense of it is to help researchers better master and take advantage of these combinations to make next generation high-fidelity endoscopes.

Abstract Image

利用深度学习算法追求高保真波导成像复原:综述
波导成像被认为是生物医学内窥镜应用中最重要、最广泛的技术之一。最近,许多人都在尝试开发用于微创临床检查的微型活体成像设备。然而,微型化意味着使用更小的光学孔径波导,这可能会带来像素伪影和像素间失真,从而降低整体成像质量。为了克服波导小型化带来的限制,深度学习算法可以成为通过后处理消除成像失真的有效工具,这在许多自动机器学习成像修复场景中已经取得了令人鼓舞的成果。作者介绍了波导成像传输和修复算法,然后讨论了它们可能的组合。结果表明,先进的波导和优化的算法相结合,可以实现前所未有的成像修复效果。未来,为了满足对高质量重建图像的需求,我们不仅要提高软件优化修复算法的能力,还要相应关注波导的硬件进步。其实际意义在于帮助研究人员更好地掌握和利用这些组合,制造出下一代高保真内窥镜。
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来源期刊
Iet Optoelectronics
Iet Optoelectronics 工程技术-电信学
CiteScore
4.50
自引率
0.00%
发文量
26
审稿时长
6 months
期刊介绍: IET Optoelectronics publishes state of the art research papers in the field of optoelectronics and photonics. The topics that are covered by the journal include optical and optoelectronic materials, nanophotonics, metamaterials and photonic crystals, light sources (e.g. LEDs, lasers and devices for lighting), optical modulation and multiplexing, optical fibres, cables and connectors, optical amplifiers, photodetectors and optical receivers, photonic integrated circuits, photonic systems, optical signal processing and holography and displays. Most of the papers published describe original research from universities and industrial and government laboratories. However correspondence suggesting review papers and tutorials is welcomed, as are suggestions for special issues. IET Optoelectronics covers but is not limited to the following topics: Optical and optoelectronic materials Light sources, including LEDs, lasers and devices for lighting Optical modulation and multiplexing Optical fibres, cables and connectors Optical amplifiers Photodetectors and optical receivers Photonic integrated circuits Nanophotonics and photonic crystals Optical signal processing Holography Displays
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