Zichen Wang (Graduate Student Member, IEEE) was born in Tianjin, China, in 1997. He received the B.E. degree from the Tianjin University of Science and Technology, Tianjin, in 2019, where he is currently pursuing the M.S. degree with the Information and Automatic College.
His main interests include biomedical signal processing (signal filtering, recovering, denoising, and classification), medical image processing and analysis (IR, recovery, deblurring, and region of interest (ROI) segmentation), and some related fields. His current research mainly focuses on intelligent information processing, including inverse problems for visualization (image recovery, completion, and denoising), convex optimization, tensor computation, low-rank and sparse methods, sparse Bayesian learning (SBL), spatio-temporal-sequence imaging, machine learning, deep learning, and other advanced ideas. He is also dedicated to studying medical image processing with structural and functional analysis, such as low-dose CT (LdCT), sparse/limited-view CT, cine magnetic resonance imaging (cine-MRI), fast MRI, and electrical tomography (ET) for dynamic processing visualization. In addition, he is also interested in multimodal image processing, such as positron emission tomography/computed tomography (PET/CT), positron emission tomography/ magnetic resonance (PET/MR), computed tomography/electrical impedance tomography (CT/EIT), magnetic resonance- electrical impedance tomography (MR-EIT), and so on.
Zichen Wang (Graduate Student Member, IEEE) was born in Tianjin, China, in 1997. He received the B.E. degree from the Tianjin University of Science and Technology, Tianjin, in 2019, where he is currently pursuing the M.S. degree with the Information and Automatic College.
His main interests include biomedical signal processing (signal filtering, recovering, denoising, and classification), medical image processing and analysis (IR, recovery, deblurring, and region of interest (ROI) segmentation), and some related fields. His current research mainly focuses on intelligent information processing, including inverse problems for visualization (image recovery, completion, and denoising), convex optimization, tensor computation, low-rank and sparse methods, sparse Bayesian learning (SBL), spatio-temporal-sequence imaging, machine learning, deep learning, and other advanced ideas. He is also dedicated to studying medical image processing with structural and functional analysis, such as low-dose CT (LdCT), sparse/limited-view CT, cine magnetic resonance imaging (cine-MRI), fast MRI, and electrical tomography (ET) for dynamic processing visualization. In addition, he is also interested in multimodal image processing, such as positron emission tomography/computed tomography (PET/CT), positron emission tomography/ magnetic resonance (PET/MR), computed tomography/electrical impedance tomography (CT/EIT), magnetic resonance- electrical impedance tomography (MR-EIT), and so on.View more