Diffusion-based nonlinear filtering for multimodal data fusion with application to sleep stage assessment
Ori Katz, Ronen Talmon, Yu-Lun Lo, Hau-Tieng Wu

TL;DR
This paper introduces a manifold learning-based nonlinear filtering method for multimodal data fusion, effectively extracting relevant system variables while removing sensor-specific noise, demonstrated on sleep stage assessment data.
Contribution
It presents a novel nonlinear filtering approach using manifold learning for multimodal data, capable of isolating relevant signals without prior modality knowledge.
Findings
Method effectively filters out sensor-specific noise.
Data-driven representation correlates well with sleep stages.
Robust to noise and sensor variability.
Abstract
The problem of information fusion from multiple data-sets acquired by multimodal sensors has drawn significant research attention over the years. In this paper, we focus on a particular problem setting consisting of a physical phenomenon or a system of interest observed by multiple sensors. We assume that all sensors measure some aspects of the system of interest with additional sensor-specific and irrelevant components. Our goal is to recover the variables relevant to the observed system and to filter out the nuisance effects of the sensor-specific variables. We propose an approach based on manifold learning, which is particularly suitable for problems with multiple modalities, since it aims to capture the intrinsic structure of the data and relies on minimal prior model knowledge. Specifically, we propose a nonlinear filtering scheme, which extracts the hidden sources of variability…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Advanced Chemical Sensor Technologies · Blind Source Separation Techniques
