Litcius/Paper detail

Sm-Net OCT: a deep-learning-based speckle-modulating optical coherence tomography

Guangming Ni, Ying Chen, Renxiong Wu, Xiaoshan Wang, Ming Zeng, Yong Liu

2021Optics Express27 citationsDOIOpen Access PDF

Abstract

Speckle imposes obvious limitations on resolving capabilities of optical coherence tomography (OCT), while speckle-modulating OCT can efficiently reduce speckle arbitrarily. However, speckle-modulating OCT seriously reduces the imaging sensitivity and temporal resolution of the OCT system when reducing speckle. Here, we proposed a deep-learning-based speckle-modulating OCT, termed Sm-Net OCT, by deeply integrating conventional OCT setup and generative adversarial network trained with a customized large speckle-modulating OCT dataset containing massive speckle patterns. The customized large speckle-modulating OCT dataset was obtained from the aforementioned conventional OCT setup rebuilt into a speckle-modulating OCT and performed imaging using different scanning parameters. Experimental results demonstrated that the proposed Sm-Net OCT can effectively obtain high-quality OCT images without the electronic noise and speckle, and conquer the limitations of reducing the imaging sensitivity and temporal resolution which conventional speckle-modulating OCT has. The proposed Sm-Net OCT can significantly improve the adaptability and practicality capabilities of OCT imaging, and expand its application fields.

Topics & Concepts

Speckle patternOptical coherence tomographySpeckle noiseOpticsComputer scienceImage qualityArtificial intelligenceCoherence (philosophical gambling strategy)Speckle imagingPhysicsImage (mathematics)Quantum mechanicsOptical Coherence Tomography ApplicationsPhotoacoustic and Ultrasonic ImagingRetinal and Macular Surgery