Brain Activity
Brain activity research focuses on understanding and decoding neural signals to gain insights into cognitive processes and neurological disorders. Current research heavily utilizes machine learning, employing diverse architectures like deep learning models (including Transformers, GANs, and diffusion models), graph neural networks, and other AI techniques to analyze data from various neuroimaging modalities (EEG, fMRI). This work aims to improve the accuracy of brain activity classification for disease diagnosis, reconstruct sensory experiences from neural data (images, videos, sounds), and ultimately enhance brain-computer interfaces and personalized therapeutic interventions.
Papers
Sound reconstruction from human brain activity via a generative model with brain-like auditory features
Jong-Yun Park, Mitsuaki Tsukamoto, Misato Tanaka, Yukiyasu Kamitani
Improving visual image reconstruction from human brain activity using latent diffusion models via multiple decoded inputs
Yu Takagi, Shinji Nishimoto
Cinematic Mindscapes: High-quality Video Reconstruction from Brain Activity
Zijiao Chen, Jiaxin Qing, Juan Helen Zhou
Brain Captioning: Decoding human brain activity into images and text
Matteo Ferrante, Furkan Ozcelik, Tommaso Boccato, Rufin VanRullen, Nicola Toschi
Memory as a Mass-based Graph: Towards a Conceptual Framework for the Simulation Model of Human Memory in AI
Mahdi Mollakazemiha, Hassan Fatzade