Spiking Neural Networks for Mental Workload Classification with a Multimodal Approach
By: Jiahui An , Sara Irina Fabrikant , Giacomo Indiveri and more
Potential Business Impact:
Lets computers measure brain effort quickly.
Accurately assessing mental workload is crucial in cognitive neuroscience, human-computer interaction, and real-time monitoring, as cognitive load fluctuations affect performance and decision-making. While Electroencephalography (EEG) based machine learning (ML) models can be used to this end, their high computational cost hinders embedded real-time applications. Hardware implementations of spiking neural networks (SNNs) offer a promising alternative for low-power, fast, event-driven processing. This study compares hardware compatible SNN models with various traditional ML ones, using an open-source multimodal dataset. Our results show that multimodal integration improves accuracy, with SNN performance comparable to the ML one, demonstrating their potential for real-time implementations of cognitive load detection. These findings position event-based processing as a promising solution for low-latency, energy efficient workload monitoring in adaptive closed-loop embedded devices that dynamically regulate cognitive load.
Similar Papers
Neuromorphic Deployment of Spiking Neural Networks for Cognitive Load Classification in Air Traffic Control
Neural and Evolutionary Computing
Helps air traffic controllers stay calm.
Fine-Tuning Large Language Models Using EEG Microstate Features for Mental Workload Assessment
Human-Computer Interaction
Helps computers understand how much you're thinking.
EEG-Based Cognitive Load Classification During Landmark-Based VR Navigation
Human-Computer Interaction
Measures brain signals to help navigation systems.