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Mixed Metric Random Forest for Dense Correspondence of Cone-Beam Computed Tomography Images

机译:混合度量随机森林,用于锥形光束计算机断层扫描图像的密集对应

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Efficient dense correspondence and registration of CBCT images is an essential yet challenging task for inter-treatment evaluations of structural variations. In this paper, we propose an unsupervised mixed metric random forest (MMRF) for dense correspondence of CBCT images. The weak labeling resulted from a clustering forest is utilized to discriminate the badly-clustered supervoxels and related classes, which are favored in the following fine-tuning of the MMRF by penalized weighting in both classification and clustering entropy estimation. An iterative scheme is introduced for the forest reinforcement to minimize the inconsistent supervoxel labeling across CBCT images. In order to screen out the inconsistent matching pairs and to regularize the dense correspondence defined by the forest-based metric, we evaluate consistencies of candidate matching pairs by virtue of isometric constraints. The proposed correspondence method has been tested on 150 clinically captured CBCT images, and outperforms state-of-the-arts in terms of matching accuracy while being computationally efficient.
机译:高效密集的信件和CBCT图像的注册是结构变异的治疗互访评估的必要且挑战性的任务。在本文中,我们提出了一个无监督的混合度量随机森林(MMRF),用于CBCT图像的密集对应。来自聚类森林产生的弱标签用于区分群体的超植物和相关类,这在分类和聚类熵估计中通过惩罚加权,在MMRF的以下微调中受到青睐。引入了森林加固的迭代方案,以最大限度地减少CBCT图像上的不一致的超值标记。为了筛选出不一致的匹配对并规范基于森林的公制定义的密集对应,我们通过等距约束评估候选匹配对的常量。在计算效率的同时,在150临床捕获的CBCT图像上测试了所提出的对应方法,并且在匹配的准确性方面优于最先进的。

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