A stratified registration framework for DSA artifact reduction using random walker

Manivannan Sundarapandian, K. Ramakrishnan
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Abstract

In Digital Subtraction Angiography (DSA), non-rigid registration of the mask and contrast images to reduce the motion artifacts is a challenging problem. In this paper, we have proposed a novel stratified registration framework for DSA artifact reduction. We use quad-trees to generate the non-uniform grid of control points and obtain the sub-pixel displacement offsets using Random Walker (RW). We have also proposed a sequencing logic for the control points and an incremental LU decomposition approach that enables reuse of the computations in the RW step. We have tested our approach using clinical data sets, and found that our registration framework has performed comparable to the graph-cuts (at the same partition level), in regions wherein 95% artifact reduction was achieved. The optimization step achieves a speed improvement of 4.2 times with respect to graph-cuts.
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一种基于随机漫步器的分层配准框架
在数字减影血管造影(DSA)中,如何对掩膜和对比度图像进行非刚性配准以减少运动伪影是一个具有挑战性的问题。在本文中,我们提出了一种新的分层配准框架来减少DSA伪影。我们使用四叉树生成控制点的非均匀网格,并使用Random Walker (RW)获得亚像素位移偏移。我们还提出了控制点的顺序逻辑和增量LU分解方法,该方法可以重用RW步骤中的计算。我们已经使用临床数据集测试了我们的方法,并发现我们的注册框架的性能与图切割相当(在相同的分区级别上),其中95%的伪像减少了。优化步骤使图形切割的速度提高了4.2倍。
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