SPS Webinar: Self-Supervised Coordinate Projection Network for Sparse-View Computed Tomography
Date: 20-October-2025
Time: 09:00 AM ET (New York Time)
Presenter: Dr. Yuyao Zhang
Based on the IEEE Xplore® article under the same title
Published: IEEE Transactions on Computational Imaging, June 2023.
Download article: Original article will be made publicly available for download on the day of the webinar for 48 hours.
ARTICLE LINK
About this topic:
Self-supervised Coordinate Projection Networks (SCOPE) represent an emerging paradigm for solving highly underdetermined problems in tomographic image reconstruction. In this presentation, the presenter takes Sparse-View Computed Tomography (SVCT) as a representative application to introduce the core methodology and innovations behind this framework. SCOPE leverages implicit neural representations to model continuous imaging signals from sparse, discrete measurements, effectively acting as an implicit regularization prior for the ill-posed inverse problem. By integrating the CT forward imaging model, SCOPE directly optimizes over spatial coordinates to reconstruct high-fidelity images from severely limited projection data. This approach not only eliminates the need for paired training data but also significantly improves reconstruction robustness across different scan geometries. Recent advancements have extended this framework to a range of medical imaging tasks, including accelerated Magnetic Resonance Imaging and metal artifact reduction in CT, achieving state-of-the-art performance. In this talk, the presenter will further explore key technical components that contribute to SCOPE’s success, such as the re-projection strategy for solution space enhancement, the role of coordinate encoding schemes, and efficient ray tracing implementations. Together, these innovations position SCOPE as a powerful, generalizable tool for next-generation low-dose medical imaging.
About the presenter:
Yuyao Zhang received the B.Sc. degree in underwater acoustic electronic engineering from Harbin Engineering University, China, in 2007, the M.Sc. degree in electronic engineering from Harbin Institute of Technology, China, in 2010, and the Ph.D. degree in information science from the University of Lyon, Lyon, France, in 2014.
She is currently a Tenured Associate Professor in the School of Information Science and Technology at ShanghaiTech University since 2018. From 2014 to 2018, she was a Postdoctoral Fellow at Duke University and the University of California, Berkeley. Her current research interests include medical tomography image reconstruction, fetal MRI 3D reconstruction, quantitative brain MR imaging and human body atlas construction.
Dr. Zhang is a member of MICCAI and serves on the program committees of AAAI and IEEE ISBI. She received the Best Paper Award from Human Brain Mapping. She also serves as guest editor and reviewer for leading journals and funding agencies.