论文详情
- 英文标题
- Reliable Evaluation of MRI Motion Correction: Dataset and Insights
- 作者
- Kun Wang, Tobit Klug, Stefan Ruschke, Jan Kirschke, Reinhard Heckel
- 期刊/会议
- ICLR 2026 Poster
- 发表年份
- 2026 年
- 研究方向
- clinical prediction
ICLR 2026 Poster accepted paper at ICLR 2026. Correcting motion artifacts in scientific and medical imaging is important, as they significantly impact image quality. However, evaluating deep learning-based and classical motion correction methods remains fundamentally difficult due to the lack of accessible ground-truth target data. To address this challenge, we study three evaluation approaches: real-world evaluation based on reference scans, simulated motion, and reference-free evaluation, each with its merits and shortcomings. To enable evaluation with real-world motion artifacts, we release PMoC3D, a dataset consisting of unprocessed $\textbf{P}$aired $\textbf{Mo}$tion-$\textbf{C}$orrupted $\textbf{3D}$ brain MRI data.
