Integrating Brain-Computer Interface and Neuromorphic Computing for Human Digital Twins
Chen Shang, Jiadong Yu, and Dinh Thai Hoang

TL;DR
This paper proposes a bio-inspired framework for Human Digital Twins using Brain-Computer Interface data and neuromorphic computing, enhancing personalization, efficiency, and privacy.
Contribution
It introduces a novel HDT framework leveraging BCI signals and a neuromorphic SNN model with federated learning for improved data processing and privacy.
Findings
Enhanced data collection efficiency using BCI signals
Reduced energy consumption with neuromorphic SNN model
Improved data privacy through federated learning
Abstract
The integration of immersive communication into a human-centric ecosystem has intensified the demand for sophisticated Human Digital Twins (HDTs) driven by multifaceted human data. However, the effective construction of HDTs faces significant challenges due to the heterogeneity of data collection devices, the high energy demands associated with processing intricate data, and concerns over the privacy of sensitive information. This work introduces a novel biologically-inspired (bio-inspired) HDT framework that leverages Brain-Computer Interface (BCI) sensor technology to capture brain signals as the data source for constructing HDT. By collecting and analyzing these signals, the framework not only minimizes device heterogeneity and enhances data collection efficiency, but also provides richer and more nuanced physiological and psychological data for constructing personalized HDTs. To…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · EEG and Brain-Computer Interfaces
