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Comparison of image reconstruction techniques for optical projection tomography
Author(s) -
Anna Katharina Trull,
Jelle van der Horst,
Lucas J. van Vliet,
Jeroen Kalkman
Publication year - 2018
Publication title -
applied optics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.668
H-Index - 197
eISSN - 2155-3165
pISSN - 1559-128X
DOI - 10.1364/ao.57.001874
Subject(s) - deconvolution , point spread function , iterative reconstruction , projection (relational algebra) , optics , tomography , computer science , image resolution , computer vision , noise (video) , optical tomography , artificial intelligence , optical transfer function , image quality , physics , image (mathematics) , algorithm
We present a comparison of image reconstruction techniques for optical projection tomography. We compare conventional filtered back projection, sinogram filtering using the frequency-distance relationship (FDR), image deconvolution, and 2D point-spread-function-based iterative reconstruction. The latter three methods aim to remove the spatial blurring in the reconstructed image originating from the limited depth of field caused by the point spread function of the imaging system. The methods are compared based on simulated data, experimental optical projection tomography data of single fluorescent beads, and high-resolution optical projection tomography imaging of an entire zebrafish larva. We demonstrate that the FDR method performs poorly on data acquired with high numerical aperture optical imaging systems. We show that the deconvolution technique performs best on highly sparse data with low signal-to-noise ratio. The point-spread-function-based reconstruction method is superior for nonsparse objects and data of high signal-to-noise ratio.

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