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An iterative closest point approach for the registration of volumetric human retina image data obtained by optical coherence tomography

机译:迭代最近点法配准光学相干断层扫描所获得的人体视网膜体积图像数据

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This paper introduces an improved approach for the volume data registration of human retina. Volume data registration refers to calculating out a near-optimal transformation between two volumes with overlapping region and stitching them together. Iterative closest point (ICP) algorithm is a registration method that deals with registration between points. Classical ICP is time consuming and often traps in local minimum when the overlapping region is not big enough. Optical Coherence Tomography (OCT) volume data are several separate, partially overlapping tiles. To stitch them together is a technology in computer aided diagnosis. In this paper, a new 3D registration algorithm based on improved ICP is presented. First, the Canny edge detector is applied to generate the point cloud set of OCT images. After the detection step, an initial registration method based on the feature points of the point cloud is proposed to determine an initial transformation matrix by using singular value decomposition (SVD) method. Then, an improved ICP method is presented to accomplish fine registration. Corresponding point in the point cloud is weighted to reduce the iteration times of ICP algorithm. Finally, M-estimation is used as the objective function to decrease the impact of outliers. This registration algorithm is used to process human retinal OCT volume pairs that contain an overlapping region of 75 x 500 x 375 voxels approximately. Then a comparative experiment is conducted on some public-available datasets. The experimental results show that the proposed method outperforms the classical method.
机译:本文介绍了一种用于人类视网膜的体数据注册的改进方法。体数据配准是指在两个具有重叠区域的体之间计算出接近最佳的转换并将它们缝合在一起。迭代最近点(ICP)算法是一种处理点之间的配准的配准方法。经典ICP非常耗时,并且当重叠区域不够大时通常会陷入局部最小值。光学相干断层扫描(OCT)体积数据是几个单独的,部分重叠的图块。将它们缝合在一起是计算机辅助诊断中的一项技术。本文提出了一种基于改进ICP的3D配准算法。首先,将Canny边缘检测器应用于生成OCT图像的点云集。在检测步骤之后,提出了一种基于点云特征点的初始配准方法,通过奇异值分解(SVD)方法确定初始转换矩阵。然后,提出了一种改进的ICP方法来完成精细配准。对点云中的对应点进行加权,以减少ICP算法的迭代时间。最后,将M估计用作目标函数以减少异常值的影响。该配准算法用于处理人眼视网膜OCT体对,该体对包含大约75 x 500 x 375体素的重叠区域。然后,对一些公共数据集进行了比较实验。实验结果表明,该方法优于经典方法。

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