首页> 外文期刊>Proceedings of the IEEE >Multimodal Data Fusion Using Source Separation: Two Effective Models Based on ICA and IVA and Their Properties
【24h】

Multimodal Data Fusion Using Source Separation: Two Effective Models Based on ICA and IVA and Their Properties

机译:使用源分离的多峰数据融合:基于ICA和IVA的两个有效模型及其性质

获取原文
获取原文并翻译 | 示例
获取外文期刊封面目录资料

摘要

Fusion of information from multiple sets of data in order to extract a set of features that are most useful and relevant for the given task is inherent to many problems we deal with today. Since, usually, very little is known about the actual interaction among the data sets, it is highly desirable to minimize the underlying assumptions. This has been the main reason for the growing importance of data-driven methods, and in particular of independent component analysis (ICA) as it provides useful decompositions with a simple generative model and using only the assumption of statistical independence. A recent extension of ICA, independent vector analysis (IVA), generalizes ICA to multiple data sets by exploiting the statistical dependence across the data sets, and hence, as we discuss in this paper, provides an attractive solution to fusion of data from multiple data sets along with ICA. In this paper, we focus on two multivariate solutions for multimodal data fusion that let multiple modalities fully interact for the estimation of underlying features that jointly report on all modalities. One solution is the joint ICA model that has found wide application in medical imaging, and the second one is the transposed IVA model introduced here as a generalization of an approach based on multiset canonical correlation analysis. In the discussion, we emphasize the role of diversity in the decompositions achieved by these two models, and present their properties and implementation details to enable the user make informed decisions on the selection of a model along with its associated parameters. Discussions are supported by simulation results to help highlight the main issues in the implementation of these methods.
机译:从多组数据中融合信息以提取一组最有用且与给定任务相关的功能是我们今天要解决的许多问题所固有的。通常,由于对数据集之间实际交互的了解很少,因此非常需要使基础假设最小化。这一直是数据驱动方法,尤其是独立成分分析(ICA)日益重要的主要原因,因为它可以通过简单的生成模型并仅使用统计独立性的假设来提供有用的分解。 ICA的最新扩展,即独立向量分析(IVA),通过利用跨数据集的统计依赖性将ICA推广到多个数据集,因此,正如我们在本文中所讨论的,该方法为融合来自多个数据的数据提供了一种有吸引力的解决方案与ICA一起设置。在本文中,我们集中于两个用于多模式数据融合的多变量解决方案,这些解决方案使多个模态完全相互作用,以估计共同报告所有模态的基础特征。一种解决方案是在医学成像中得到广泛应用的联合ICA模型,第二种是此处介绍的转置IVA模型,该模型是对基于多集规范相关分析的一种方法的概括。在讨论中,我们强调了多样性在这两个模型实现的分解中的作用,并介绍了它们的属性和实现细节,以使用户能够对模型及其相关参数的选择做出明智的决策。仿真结果支持讨论,以帮助突出这些方法的实施中的主要问题。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号