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Patch-Based Segmentation without Registration: Application to Knee MRI

机译:不基于配准的基于补丁的分割:在膝部MRI中的应用

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摘要

Atlas based segmentation techniques have been proven to be effective in many automatic segmentation applications. However, the reliance on image correspondence means that the segmentation results can be affected by any registration errors which occur, particularly if there is a high degree of anatomical variability. This paper presents a novel multi-resolution patch-based segmentation framework which is able to work on images without requiring registration. Additionally, an image similarity metric using 3D histograms of oriented gradients is proposed to enable atlas selection in this context. We applied the proposed approach to segment MR images of the knee from the MICCAI SKI10 Grand Challenge, where 100 training atlases are provided and evaluation is conducted on 50 unseen test images. The proposed method achieved good scores overall and is comparable to the top entries in the challenge for cartilage segmentation, demonstrating good performance when comparing against state-of-the-art approaches customised to Knee MRI.
机译:基于Atlas的分割技术已被证明在许多自动分割应用中都是有效的。但是,依赖于图像对应性意味着分割结果会受到出现的任何配准错误的影响,尤其是在解剖学高度可变的情况下。本文提出了一种新颖的基于多分辨率补丁的分割框架,该框架能够处理图像而无需注册。另外,提出了使用定向梯度的3D直方图的图像相似性度量,以在这种情况下实现图集选择。我们将提出的方法应用于MICCAI SKI10大挑战赛的膝盖MR图像分割,其中提供了100个训练图集,并对50个看不见的测试图像进​​行了评估。所提出的方法在总体上获得了良好的评分,可与软骨分割挑战中的顶级条目相媲美,与针对膝盖MRI定制的最新方法相比,表现出了良好的性能。

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