Brain Computer Interface
Brain-computer interfaces (BCIs) aim to establish direct communication pathways between the brain and external devices, primarily using electroencephalography (EEG) signals. Current research heavily emphasizes improving decoding accuracy and efficiency through advanced machine learning techniques, including deep learning architectures like transformers and convolutional neural networks, as well as novel signal processing methods such as Riemannian geometry and wavelet analysis. These advancements are crucial for enhancing the reliability and practicality of BCIs, with potential applications ranging from assistive technologies for individuals with motor impairments to neurorehabilitation and the understanding of cognitive processes.
Papers
A Comparative Study of Conventional and Tripolar EEG for High-Performance Reach-to-Grasp BCI Systems
Ali Rabiee, Sima Ghafoori, Anna Cetera, Walter Besio, Reza Abiri
Wavelet Analysis of Noninvasive EEG Signals Discriminates Complex and Natural Grasp Types
Ali Rabiee, Sima Ghafoori, Anna Cetera, Reza Abiri
Improved Motor Imagery Classification Using Adaptive Spatial Filters Based on Particle Swarm Optimization Algorithm
Xiong Xiong, Ying Wang, Tianyuan Song, Jinguo Huang, Guixia Kang
Enhancing Motor Imagery Decoding in Brain Computer Interfaces using Riemann Tangent Space Mapping and Cross Frequency Coupling
Xiong Xiong, Li Su, Jinguo Huang, Guixia Kang