Fang Bin, Tang Yuan Yan
Department of Computer Science, Chongqing University, PR China.
IEEE Trans Biomed Eng. 2006 Jun;53(6):1183-7. doi: 10.1109/TBME.2005.863927.
The vascular tree of the retina is likely the most representative and stable feature for eye fundus images in registration. Based on the reconstructed vascular tree, we propose an elastic matching algorithm to register pairs of fundus images. The identified vessels are thinned and approximated using short line segments of equal length that results a set of elements. The set of elements corresponding to one vascular tree are elastically deformed to optimally match the set of elements of another vascular tree, with the guide of an energy function to finally establish pixel relationship between both vascular trees. The mapped positions of pixels in the transformed retinal image are computed to be the sum of their original locations and corresponding displacement vectors. For the purpose of performance comparison, a weak affine model based fast chamfer matching technique is proposed and implemented. Experiment results validated the effectiveness of the elastic matching algorithm and its advantage over the weak affine model for registration of retinal fundus images.
视网膜血管树可能是眼底图像配准中最具代表性和稳定性的特征。基于重建的血管树,我们提出了一种弹性匹配算法来对眼底图像对进行配准。识别出的血管使用等长的短线段进行细化和近似,从而得到一组元素。对应于一棵血管树的元素集在能量函数的引导下进行弹性变形,以最佳匹配另一棵血管树的元素集,最终在两棵血管树之间建立像素关系。变换后的视网膜图像中像素的映射位置计算为其原始位置与相应位移向量之和。为了进行性能比较,提出并实现了一种基于弱仿射模型的快速倒角匹配技术。实验结果验证了弹性匹配算法的有效性及其在视网膜眼底图像配准方面相对于弱仿射模型的优势。