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      Multi-modal data fusion using source separation: Two effective models based on ICA and IVA and their properties.

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          Abstract

          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 datasets, 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 datasets by exploiting the statistical dependence across the datasets, and hence, as we discuss in this paper, provides an attractive solution to fusion of data from multiple datasets along with ICA. In this paper, we focus on two multivariate solutions for multi-modal 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 the Transposed IVA model introduced here as a generalization of an approach based on multi-set canonical correlation analysis. In the discussion, we emphasize the role of diversity in the decompositions achieved by these two models, 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.

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          Author and article information

          Journal
          Proc IEEE Inst Electr Electron Eng
          Proceedings of the IEEE. Institute of Electrical and Electronics Engineers
          Institute of Electrical and Electronics Engineers (IEEE)
          0018-9219
          0018-9219
          Sep 01 2015
          : 103
          : 9
          Affiliations
          [1 ] Department of CSEE, University of Maryland, Baltimore County, Baltimore, MD 21250, USA.
          [2 ] University of New Mexico and the Mind Research Network, Albuquerque, NM 87106, USA.
          Article
          NIHMS725363
          10.1109/JPROC.2015.2461624
          4624202
          26525830
          95acad43-312a-4e21-a50a-25157ac7b2ac
          History

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