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Warping with optimized weighting factors of displacement vectors - a new method to reduce inter-individual variations in brain imaging

机译:用优化的位移向量进行翘曲 - 一种降低脑成像间多种变化的新方法

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An accurate comparison of multimodal and/or interindividual 3D image datasets of brains requires geometric transformation techniques (warping) to reduce geometric variations. Here, a subset of warping techniques, namely point-based warping, is investigated. For this kind of warping landmarks between datasets have to be defined. In large 3D datasets manually setting of landmarks is time-consuming and therefore impracticable. Consequently we approach this problem by investigating fast automatic procedures for determining landmarks, based on Monte-Carlo-techniques. The combined methods were tested on 3D autoradiographs of brains of gerbils. The results are evaluated by three different similarity functions. We found that the combined approach is highly applicable in processing brain images.
机译:大脑的多模式和/或InterDigationual 3D图像数据集的准确比较需要几何变换技术(翘曲)以减少几何变化。这里,研究了翘曲技术,即基于点的翘曲的子集。对于必须定义数据集之间的这种翘曲地标。在大3D 3D数据集中,手动设置地标是耗时,因此不切实际。因此,我们通过研究基于Monte-Carlo技术来确定地标的快速自动程序来解决这个问题。在Gerbils大脑的3D容量显影中测试了组合方法。结果由三个不同的相似性评估。我们发现组合方法在加工脑图像中非常适用。

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