Segmentation of Femoral Cartilage with a Hybrid Method Combining Voxel Classification and Active Appearance Models

C. Öztürk, S. Albayrak
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Abstract

In this paper a hybrid segmentation method was proposed for delineation of the femoral cartilage compartment in knee MR images. A formerly developed voxel classification-based segmentation system was combined with an active appearance model (AAM) based segmentation system with an aim to solve the oversegmentation problems of purely classification-based approaches. The voxel classification-based segmentation was achieved through region-growing of sampled voxels depending on one-versus-all classifiers that used approximate nearest neighbour algorithm. Before the appearance model construction, dense set of correspondences were determined on the surfaces of cartilage atlases in 10 training MR images through an iterative shape-context-based non-rigid registration approach. Then, the appearance models for femoral cartilage compartment was constructed either using all of 10 training atlases or grouping these atlases as large and small depending on the physical examination information of the participants. The experimental analyses involved a comparative evaluation of the accuracies of these different AAM-based segmentations both individually and in combination with the voxel classification-based segmentations in 23 testing MR images as well as assessment of the misclassifications of the former segmentation system. As a result, the correspondence finding procedure worked successfully on the training atlases, and the hybrid segmentations with grouped appearance models achieved the closest accuracies to those of the voxel classification-based segmentation. The hybrid segmentations with appearance models that depended on the patient-specific information were evaluated as the most likely method to improve the segmentation accuracies with removal of oversegmented cartilage compartments.
结合体素分类和活动外观模型的混合方法分割股骨软骨
本文提出了一种混合分割方法,用于膝关节MR图像中股骨软骨间室的分割。为了解决单纯基于分类的分割方法的过分割问题,将已有的基于体素分类的分割系统与基于主动外观模型(AAM)的分割系统相结合。基于体素分类的分割是通过使用近似近邻算法的单对全分类器对采样体素进行区域生长来实现的。在构建外观模型之前,通过基于形状-上下文的迭代非刚性配准方法,在10张训练MR图像的软骨图谱表面确定密集对应集。然后,根据参与者的体检信息,使用所有10个训练地图集或将这些地图集分组为大小,构建股骨软骨室外观模型。实验分析包括对这些不同的基于aam的分割的准确性进行比较评估,无论是单独的还是与23张测试MR图像中基于体素分类的分割相结合,以及对前分割系统的错误分类进行评估。结果表明,对应查找过程在训练图集上成功地工作,并且具有分组外观模型的混合分割获得了与基于体素分类的分割最接近的精度。基于患者特异性信息的外观模型混合分割被评价为最有可能通过去除过度分割的软骨室来提高分割精度的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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