Licai Gao
4 Papers
Licai Gao is an academic researcher. The author has contributed to research in topics: Computer science & Electroencephalography. The author has co-authored 2 publications.
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Papers
Multi-Level Laser Induced Pain Measurement With Wasserstein Generative Adversarial Network - Gradient Penalty Model
Jia Leng,Yihao Yan,Xin Yu,Yitai Lou,Yanbing Liu,Licai Gao,Yuan Sun,Tianzheng He,Chao Feng,Fangzhou Xu +9 more
TL;DR: It can be inferred from the good classification performance of features in the parietal region of the brain that the sensory function of the parietal lobe region is effectively activated during the occurrence of pain.
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One-Dimensional Local Binary Pattern and Common Spatial Pattern Feature Fusion Brain Network for Central Neuropathic Pain
Fang Zhou Xu,Chongfeng Wang,Xin Yu,Jinzhao Zhao,Ming Li,Jiaqi Zhao,Licai Gao,De-quan Wang,Sen-Lu Yin,Yang Zhang,Jia Leng +10 more
TL;DR: In this article , the changes of brain network functional connectivity in patients with and without central neuropathic pain after spinal cord injury (SCI) have been analyzed using electroencephalogram (EEG) signals.
Exploration of sleep function connection and classification strategies based on sub-period sleep stages
Fang Zhou Xu,Jinzhao Zhao,Ming Li,Xin Yu,Chongfeng Wang,Yitai Lou,Weiyou Shi,Yanbing Liu,Licai Gao,Qingbo Yang,Baokun Zhang,Shanshan Lu,Jiyou Tang,Jia Leng +13 more
TL;DR: In this article , a functional connection network is constructed by using the average value of the fusion features to analyze the interaction of brain regions in different frequency bands during sleep stages, which can effectively promote the development and application of an EEG sleep staging system.
Self-supervised eeg representation learning with contrastive predictive coding for post-stroke
Fangzhou Xu,Yihao Yan,Jianqun Zhu,Xinyi Chen,Licai Gao,Yanbing Liu,Weiyou Shi,Yitai Lou,Wei Wang,Jia Leng,Yang Zhang +10 more
TL;DR: A contrast predictive coding (CPC) framework based on the modified s-transform (MST) to generate MST-CPC feature representations that can obtain effective feature representations and improve the performance of MI-BCI systems is proposed.