OCT eye fundus image data registration method

A fundus image and data matching technology, applied in image data processing, image enhancement, image analysis, etc., can solve problems such as doping non-rigid transformation, and achieve the effect of large image accuracy and efficiency improvement

Inactive Publication Date: 2017-02-22
JILIN UNIV
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

However, due to the bottleneck of the optical coherence tomography equipment itself and the involuntary movement of the human eye during the scanning process, the obtained optical coherence tomography fundus data will be doped with some small non-rigid transformations (Chen Guolin. Non-rigid medical image Research and Implementation of Registration Method [D]. Master Thesis of Nanjing University of Science and Technology, 2009)
Therefore, the above method has certain limitations when dealing with such special clinical ophthalmology optical coherence tomography images.

Method used

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  • OCT eye fundus image data registration method

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Experimental program
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Embodiment 1

[0126] In the following, the present invention will be further described in combination with experiments, and the present invention will be compared with the classic iterative closest point method to verify its accuracy and robustness.

[0127] The computer configuration used in the experiment is Intel Core E7500 dual-core CPU, the main frequency is 2.93GHz, the memory is 1GB×2 DDR2, the operating system is Microsoft Windows Win7 Sp1 flagship version, and the algorithm implementation platform is MicrosoftVisual Studio 2010.

[0128] In order to evaluate the registration performance of the algorithm, the algorithm of the present invention uses two fundus optical tomography images as experimental data, which are adjacent parts of the human retina structure. The overlap of the two datasets is approximately 75 x 500 x 375 voxels. image 3 The registration process of point cloud data is shown from four different perspectives. The left area of ​​the picture shows the initial positi...

Embodiment 2

[0133] In addition, the present invention uses the registration error to evaluate the registration accuracy of the algorithm, and uses the time consumption length to evaluate the registration efficiency of the algorithm. The registration error represents the percentage of the number of points that failed to match corresponding points in the registration process to the total number of point cloud points, and it has the following calculation form

[0134]

[0135] where Success(P A ,Q B ) is defined as

[0136]

[0137] In the above formula, N represents the number of corresponding point pairs involved in the calculation. (P A ,Q B ) represents a pair of corresponding points. Success(P A ,Q B ) is used to represent the corresponding point pair (P A ,Q B ) registration results. If the Euclidean distance between the corresponding point pairs after registration is less than the given threshold δ, it means that the corresponding point pair registration is successful,...

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Abstract

The invention discloses an OCT eye fundus image data registration method, which comprises the following steps: at first, extracting retina edges of an OCT eye fundus image by virtue of a Canny edge detection method, and collecting the edges in a format of point cloud data; then, extracting characteristic points of the point cloud data by adopting a space grid division method; next, calculating a transformation matrix of point clouds to be registered to eliminate obvious position errors by virtue of an SVD (singular value decomposition) algorithm; finally, performing accurate registration by virtue of an improved iterative closest point algorithm, and applying an obtained rotation matrix and translation matrix to the original OCT eye fundus image to obtain a final result. When a dense point cloud with a relatively large volume of data is processed, the method has obvious advantages in terms of time complexity and registration accuracy. Under most conditions, the efficiency of a conventional iterative closest point algorithm is improved by 70 percent by the method, not only can the OCT eye fundus image be effectively registered and spliced, but also the accuracy of a large-vision eye fundus retina accuracy is ensured.

Description

technical field [0001] The present application relates to image registration technology, in particular, to a method for registration of three-dimensional fundus image data using OCT imaging. Background technique [0002] Image registration technology usually refers to finding a series of spatial transformations for an image so that it has the same spatial position as the feature information corresponding to another image or multiple images. For the fundus data of OCT three-dimensional imaging, the result of registration should make the layers of the retina in different fundus images aligned with each other without obvious faults. [0003] Currently, image registration techniques are mainly divided into two categories: feature-based image registration and mutual information-based image registration. The feature-based image registration method first extracts the feature information of the image, and then uses these features as a model for registration. The result of feature ...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06T7/33
CPCG06T2207/10028G06T2207/10101G06T2207/30041
Inventor 王欣赵振龙
Owner JILIN UNIV
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