Develops an SNN-integrated personalized federated learning model for BCI brain-signal analysis in immersive communication, reporting highest identification accuracy and 6.46x lower inference energy than ANN baselines.
Enhancing immersion and presence in the meta- verse with over-the-air brain-computer interface,
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Spiking Personalized Federated Learning for Brain-Computer Interface-Enabled Immersive Communication
Develops an SNN-integrated personalized federated learning model for BCI brain-signal analysis in immersive communication, reporting highest identification accuracy and 6.46x lower inference energy than ANN baselines.