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White Matter Fiber Representation Using Continuous Dictionary Learning

机译:使用连续字典学习的白质纤维表示

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With increasingly sophisticated Diffusion Weighted MRI acquisition methods and modeling techniques, very large sets of streamlines (fibers) are presently generated per imaged brain. These reconstructions of white matter architecture, which are important for human brain research and pre-surgical planning, require a large amount of storage and are often unwieldy and difficult to manipulate and analyze. This work proposes a novel continuous parsimonious framework in which signals are sparsely represented in a dictionary with continuous atoms. The significant innovation in our new methodology is the ability to train such continuous dictionaries, unlike previous approaches that either used prefixed continuous transforms or training with finite atoms. This leads to an innovative fiber representation method, which uses Continuous Dictionary Learning to sparsely code each fiber with high accuracy. This method is tested on numerous tractograms produced from the Human Connectome Project data and achieves state-of-the-art performances in compression ratio and reconstruction error.
机译:随着越来越复杂的扩散加权MRI获取方法和建模技术,每次成像大脑目前产生非常大的流线(纤维)。这些白质架构的重建,对于人脑研究和前手术计划很重要,需要大量的储存,并且往往是笨重的,并且难以操纵和分析。这项工作提出了一种新的持续解析框架,其中信号在具有连续原子的字典中稀疏地表示。我们的新方法中的重大创新是培训这种连续词典的能力,与先前的方法使用预混连续变换或具有有限原子的培训。这导致了一种创新的光纤表示方法,它使用连续字典学习以高精度地稀疏地编码每个光纤。该方法在从人类连接项目数据中产生的许多牵引图上测试,并在压缩比和重建误差中实现最先进的性能。

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