Optimal Transport-based Graph Matching for 3D retinal OCT image
registration
- URL: http://arxiv.org/abs/2203.00069v1
- Date: Mon, 28 Feb 2022 20:15:12 GMT
- Title: Optimal Transport-based Graph Matching for 3D retinal OCT image
registration
- Authors: Xin Tian, Nantheera Anantrasirichai, Lindsay Nicholson, Alin Achim
- Abstract summary: This paper presents a novel but efficient framework involving an optimal transport based graph matching (OT-GM) method for 3D mouse OCT image registration.
Both subjective and objective evaluation results demonstrate that our framework outperforms other well-established methods on mouse OCT images within a reasonable execution time.
- Score: 13.93497551507791
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Registration of longitudinal optical coherence tomography (OCT) images
assists disease monitoring and is essential in image fusion applications. Mouse
retinal OCT images are often collected for longitudinal study of eye disease
models such as uveitis, but their quality is often poor compared with human
imaging. This paper presents a novel but efficient framework involving an
optimal transport based graph matching (OT-GM) method for 3D mouse OCT image
registration. We first perform registration of fundus-like images obtained by
projecting all b-scans of a volume on a plane orthogonal to them, hereafter
referred to as the x-y plane. We introduce Adaptive Weighted Vessel Graph
Descriptors (AWVGD) and 3D Cube Descriptors (CD) to identify the correspondence
between nodes of graphs extracted from segmented vessels within the OCT
projection images. The AWVGD comprises scaling, translation and rotation, which
are computationally efficient, whereas CD exploits 3D spatial and frequency
domain information. The OT-GM method subsequently performs the correct
alignment in the x-y plane. Finally, registration along the direction
orthogonal to the x-y plane (the z-direction) is guided by the segmentation of
two important anatomical features peculiar to mouse b-scans, the Internal
Limiting Membrane (ILM) and the hyaloid remnant (HR). Both subjective and
objective evaluation results demonstrate that our framework outperforms other
well-established methods on mouse OCT images within a reasonable execution
time.
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