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Supervised Block Sparse Dictionary Learning for Simultaneous Clustering and Classification in Computational Anatomy

机译:监督块稀疏词典学习在计算解剖学中的同时聚类和分类

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摘要

An important prerequisite for computational neuroanatomy is the spatial normalization of the data. Despite its importance for the success of the subsequent statistical analysis, image alignment is dealt with from the perspective of image matching, while its influence on the group analysis is neglected. The choice of the template, the registration algorithm as well as the registration parameters, all confound group differences and impact the outcome of the analysis. In order to limit their influence, we perform multiple registrations by varying these parameters, resulting in multiple instances for each sample. In order to harness the high dimensionality of the data and emphasize the group differences, we propose a supervised dimensionality reduction technique that takes into account the organization of the data. This is achieved by solving a supervised dictionary learning problem for block-sparse signals. Structured sparsity allows the grouping of instances across different independent samples, while label supervision allows for discriminative dictionaries. The block structure of dictionaries allows constructing multiple classifiers that treat each dictionary block as a basis of a subspace that spans a separate band of information. We formulate this problem as a convex optimization problem with a geometric programming (GP) component. Promising results that demonstrate the potential of the proposed approach are shown for an MR image dataset of Autism subjects.
机译:计算神经解剖学的重要前提是数据的空间标准化。尽管它对于后续统计分析的成功非常重要,但是从图像匹配的角度来处理图像对齐,而忽略了它对组分析的影响。模板的选择,配准算法以及配准参数都会混淆组差异并影响分析结果。为了限制它们的影响,我们通过更改这些参数来执行多次注册,从而为每个样本生成多个实例。为了利用数据的高维度并强调组差异,我们提出了一种考虑了数据组织的监督降维技术。这是通过解决针对稀疏块的监督字典学习问题来实现的。结构性稀疏性允许对不同独立样本中的实例进行分组,而标签监督则允许区分字典。字典的块结构允许构造多个分类器,这些分类器将每个字典块视为跨越单独信息带的子空间的基础。我们将此问题公式化为具有几何规划(GP)组件的凸优化问题。对于自闭症患者的MR图像数据集,有力的结果证明了该方法的潜力。

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  • 期刊名称 other
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  • 年(卷),期 -1(17),0 2
  • 年度 -1
  • 页码 446–453
  • 总页数 10
  • 原文格式 PDF
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