Dr. Chunyu Liu | Cognitive Computing | Best Researcher Award
Chunyu Liu is a Lecturer at North China Electric Power University, specializing in machine learning, neural decoding, and visual attention. 📚 She earned her B.S. in Mathematics and Applied Mathematics from Henan Normal University, an M.S. in Applied Mathematics from Northwest A&F University, and a Ph.D. in Computer Application Technology from Beijing Normal University. 🎓 She completed postdoctoral training at Peking University. 🔬 Her research integrates AI methodologies with cognitive neuroscience, focusing on neural encoding, decoding, and attention mechanisms. 🧠 She has published over 10 research papers, including six SCI-indexed publications as the first author. 📝 Her work aims to bridge artificial intelligence with human cognitive function understanding, contributing significantly to computational neuroscience. 🌍 Liu has also been involved in several major research projects, furthering advancements in neural signal analysis and cognitive computing. 🚀
Profile
Education 🎓
Chunyu Liu holds a strong academic background in mathematics and computational sciences. She obtained her B.S. degree in Mathematics and Applied Mathematics from Henan Normal University. ➕ She pursued her M.S. in Applied Mathematics at Northwest A&F University, where she deepened her expertise in mathematical modeling. 🔢 Continuing her academic journey, she earned a Ph.D. in Computer Application Technology from Beijing Normal University. 🖥️ Her doctoral research explored advanced AI techniques applied to neural decoding and cognitive processing. 🧠 To further refine her skills, she completed postdoctoral training at Peking University, focusing on integrating artificial intelligence with neural mechanisms. 🔬 Her academic pathway reflects a multidisciplinary approach, merging mathematics, computer science, and cognitive neuroscience to address complex challenges in brain science and AI. 📊 Liu’s education laid the foundation for her contributions to machine learning, visual attention studies, and neural encoding research.
Experience 👨🏫
Dr. Chunyu Liu is currently a Lecturer at North China Electric Power University, where she teaches and conducts research in cognitive computing and machine learning. 🎓 She has led and collaborated on multiple projects related to neural encoding and decoding, investigating how the brain processes object recognition, emotions, and attention. 🧠 Prior to her current role, she completed postdoctoral research at Peking University, where she worked on advanced AI-driven models for neural signal analysis. 🔍 Over the years, Liu has gained extensive experience in analyzing multimodal neural signals, including magnetoencephalography (MEG) and functional MRI (fMRI). 📡 She has also served as a reviewer for esteemed scientific journals and collaborated with interdisciplinary research teams on AI and brain science projects. 🔬 Her expertise extends to both academia and industry, where she has contributed to the development of novel computational models for decoding brain activity. 🚀
Research Interests 🔬
Dr. Chunyu Liu has received recognition for her outstanding contributions to cognitive computing and AI-driven neuroscience research. 🏅 She has been nominated for the prestigious International Cognitive Scientist Award for her pioneering work in neural decoding and visual attention mechanisms. 🎖️ Liu’s research publications have been featured in high-impact journals, earning her accolades from the scientific community. 📜 Her first-author papers in IEEE Transactions on Neural Systems and Rehabilitation Engineering, Science China Life Sciences, and IEEE Journal of Biomedical and Health Informatics have been widely cited. 📝 She has also been honored with research grants and funding for AI-driven cognitive studies. 🔬 Her innovative work in decoding brain signals has been recognized in international AI and neuroscience conferences. 🌍 Liu’s academic excellence and contributions continue to shape the field of computational neuroscience and machine learning applications in cognitive science. 🚀
Publications 📚
- Decoding six basic emotions from brain functional connectivity patterns
C Liu, Y Wang, X Sun, Y Wang, F FangScience China Life Sciences 66 (4), 835-847
- Decoding disparity categories in 3-dimensional images from fMRI data using functional connectivity patterns
C Liu, Y Li, S Song, J ZhangCognitive Neurodynamics 14 (2), 169-179
- Categorizing objects from MEG signals using EEGNet
R Shi, Y Zhao, Z Cao, C Liu, Y Kang, J ZhangCognitive Neurodynamics, 1-13
- Rapidly decoding image categories from MEG data using a multivariate short-time FC pattern analysis approach
C Liu, Y Kang, L Zhang, J ZhangIEEE Journal of Biomedical and Health Informatics 25 (4), 1139-1150
- Image categorization from functional magnetic resonance imaging using functional connectivity
C Liu, S Song, X Guo, Z Zhu, J ZhangJournal of neuroscience methods 309, 71-80
- s-TBN: A new neural decoding model to identify stimulus categories from brain activity patterns
C Liu, B Cao, J ZhangIEEE Transactions on Neural Systems and Rehabilitation Engineering
- Neural representation of multi-objectattention:Evidence from magnetoencephalography
C Liu, P Cai, F FangThe 16th Annual Meeting of Chinese Neuroscience Society & The 2nd CJK …