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Convolutional dictionary learning for blind deconvolution of optical coherence tomography images

Junzhe Wang, Brendt Wohlberg, R. B. A. Adamson

2022Biomedical Optics Express18 citationsDOIOpen Access PDF

Abstract

In this study, we demonstrate a sparsity-regularized, complex, blind deconvolution method for removing sidelobe artefacts and stochastic noise from optical coherence tomography (OCT) images. Our method estimates the complex scattering amplitude of tissue on a line-by-line basis by estimating and deconvolving the complex, one-dimensional axial point spread function (PSF) from measured OCT A-line data. We also present a strategy for employing a sparsity weighting mask to mitigate the loss of speckle brightness within tissue-containing regions caused by the sparse deconvolution. Qualitative and quantitative analyses show that this approach suppresses sidelobe artefacts and background noise better than traditional spectral reshaping techniques, with negligible loss of tissue structure. The technique is particularly useful for emerging OCT applications where OCT images contain strong specular reflections at air-tissue boundaries that create large sidelobe artefacts.

Topics & Concepts

DeconvolutionComputer scienceOptical coherence tomographyArtificial intelligencePoint spread functionSpeckle patternSpeckle noiseComputer visionWeightingBrightnessBlind deconvolutionOpticsNoise (video)Pattern recognition (psychology)Coherence (philosophical gambling strategy)Multispectral imageConvolution (computer science)AlgorithmWiener deconvolutionHyperspectral imagingConvolutional neural networkImage processingTomographySparse approximationSparse matrixIterative reconstructionInverse problemPoint (geometry)Spectral imagingImage restorationComputationPoint targetBackground noiseSignal-to-noise ratio (imaging)ScatteringPhoton diffusionOptical Coherence Tomography ApplicationsRandom lasers and scattering mediaOptical Imaging and Spectroscopy Techniques
Convolutional dictionary learning for blind deconvolution of optical coherence tomography images | Litcius