详细信息
- 来源站点
- ArXiv CS.CV
- 作者
- Zhenkai Zhang, Markus Hiller, Krista A. Ehinger, Tom Drummond
- 文章类型
- NEWS
- 语言
- en
- 发布日期
- 2026-06-19
摘要
arXiv:2606.20112v1 Announce Type: new Abstract: Generating high-resolution 3D CT volumes with fine details remains challenging due to substantial computational demands and optimization difficulties inherent to existing generative models. In this paper, we propose the Pixel-Level Residual Diffusion Transformer (PRDiT), a scalable generative framework that synthesizes high-quality 3D medical volumes directly at voxel-level. PRDiT introduces a two-stage training architecture comprising 1) a local denoiser in the form of an MLP-based blind estimator operating on overlapping 3D patches to separate low-frequency structures efficiently, and 2) a global residual diffusion transformer employing memory-efficient attention to model and refine high-frequency residuals across entire volumes. This coarse-to-fine modeling strategy simplifies optimization, enhances training stability, and effectively preserves subtle structures without the limitations of an autoencoder bottleneck.