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Spatially-variant image deconvolution for photoacoustic tomography

Dan Xie, Wende Dong, Jiawei Zheng, Chao Tian

2023Optics Express15 citationsDOIOpen Access PDF

Abstract

Photoacoustic tomography (PAT) system can reconstruct images of biological tissues with high resolution and contrast. However, in practice, the PAT images are usually degraded by spatially variant blur and streak artifacts due to the non-ideal imaging conditions and chosen reconstruction algorithms. Therefore, in this paper, we propose a two-phase restoration method to progressively improve the image quality. In the first phase, we design a precise device and measuring method to obtain spatially variant point spread function samples at preset positions of the PAT system in image domain, then we adopt principal component analysis and radial basis function interpolation to model the entire spatially variant point spread function. Afterwards, we propose a sparse logarithmic gradient regularized Richardson-Lucy (SLG-RL) algorithm to deblur the reconstructed PAT images. In the second phase, we present a novel method called deringing which is also based on SLG-RL to remove the streak artifacts. Finally, we evaluate our method with simulation, phantom and in vivo experiments, respectively. All the results show that our method can significantly improve the quality of PAT images.

Topics & Concepts

Point spread functionDeconvolutionStreakIterative reconstructionComputer scienceImaging phantomInterpolation (computer graphics)Image qualityOpticsImage resolutionArtificial intelligenceBlind deconvolutionComputer visionImage restorationTomographyPhase (matter)Image processingAlgorithmImage (mathematics)PhysicsQuantum mechanicsPhotoacoustic and Ultrasonic ImagingThermography and Photoacoustic TechniquesOptical Imaging and Spectroscopy Techniques
Spatially-variant image deconvolution for photoacoustic tomography | Litcius