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A Survey of Advances in Multimodal Federated Learning with Applications

Author

Listed:
  • Gregory Barry

    (Air Force Institute of Technology)

  • Elif Konyar

    (University of Florida)

  • Brandon Harvill

    (United States Air Force)

  • Chancellor Johnstone

    (Air Force Institute of Technology)

Abstract

Data privacy has long been an item of emphasis for personal data. This is especially true for healthcare data, which is often multimodal (i.e., it utilizes in some fashion multiple data streams from multiple sources). In an effort to enhance the knowledge-base of privacy-preserving techniques with respect to multimodal data, we provide a survey of multimodal federated learning (MMFL). Our paper includes a thorough introduction to federated learning as well as a discussion on applications of multimodal federated learning to disease classification, autonomous driving, and human activity recognition, among others. Additionally, we describe various methodological advances in MMFL, a subset of which include extensions to supervised learning, personalization, generative models, data reduction, and feature selection. As a proof-of-concept for MMFL, we also include a novel application of federated learning to a series of physiological signals collected during simulated flights, known as the CogPilot dataset.

Suggested Citation

  • Gregory Barry & Elif Konyar & Brandon Harvill & Chancellor Johnstone, 2024. "A Survey of Advances in Multimodal Federated Learning with Applications," Springer Optimization and Its Applications,, Springer.
  • Handle: RePEc:spr:spochp:978-3-031-53092-0_15
    DOI: 10.1007/978-3-031-53092-0_15
    as

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