首页> 外文会议>Biomedical Imaging (ISBI), 2012 9th IEEE International Symposium on >Landmark localisation in brain MR images using feature point descriptors based on 3D local self-similarities
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Landmark localisation in brain MR images using feature point descriptors based on 3D local self-similarities

机译:使用基于3D局部自相似性的特征点描述符在大脑MR图像中进行地标定位

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The identification of anatomical landmarks in the brain is an important task in registration and morphometry. The manual identification and labelling of these landmarks is very time consuming and prone to observer errors, especially when large datasets must be analysed. In this paper we present an approach that describes landmarks based on their intrinsic geometry, rather than their intensity patterns. As the proposed approach moves away from the traditional way to describe landmarks (based on intensities), we show that using this kind of descriptors are well suited for the landmark localisation problem in MR brain images since the intensity information in these images is not quantitative (and intensity normalization is not straight forward). Our results show that for localizing 20 anatomical landmarks in brain MR images, the proposed descriptor performs better in 75% of cases when compared with a Haar feature based classifier and 100% of cases when compared to non-rigid registration.
机译:大脑中解剖学标志的识别是配准和形态计量学中的重要任务。手动识别和标记这些地标非常耗时,并且容易出现观察者错误,尤其是在必须分析大型数据集时。在本文中,我们提出一种基于地标的内在几何形状而不是其强度模式来描述地标的方法。随着提出的方法脱离传统的基于强度描述地标的方法,我们证明,使用此类描述符非常适合MR脑部图像中的地标定位问题,因为这些图像中的强度信息不是定量的(并且强度归一化不是直接的)。我们的结果表明,对于在脑部MR图像中定位20个解剖标记,与基于Haar特征的分类器相比,拟议的描述符在75%的情况下表现更好,与非刚性配准的情况相比,在100%的情况下表现更好。

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