中文

DeVAR: Low-Dose CT Denoising via Visual Autoregressive Modeling

图像与视频处理 2026-06-26 v1 计算机视觉与模式识别

摘要

Computed tomography (CT) plays a crucial role in medical diagnosis, but minimizing radiation exposure while maintaining image quality remains a critical challenge. Low-dose CT (LDCT) protocols reduce radiation risks but inevitably suffer from severe noise and artifacts that compromise diagnostic accuracy. While existing deep learning methods have achieved promising results, there remains a continuous quest for generative paradigms that intrinsically capture global-to-local structural dependencies to better preserve fine anatomical details. To this end, we propose DeVAR, a novel generative framework that applies visual autoregressive modeling (VAR) to LDCT denoising for the first time. Conditioned on global context provided by LDCT prefix tokens, DeVAR progressively generates discrete token maps of the target normal-dose CT (NDCT) via next-scale prediction. Because quantization inherently discards high-frequency information, we introduce a residual refiner to capture subtle anatomical structures beyond the capacity of a discrete codebook. Finally, empowered by a dual-representation hybrid training strategy, our hybrid NDCT decoder seamlessly integrates continuous and discrete latents to reconstruct high-fidelity, detail-preserved images. Extensive experiments on two public datasets demonstrate that DeVAR consistently achieves superior qualitative and quantitative performance compared to state-of-the-art LDCT denoising methods.

引用

@article{arxiv.2606.28453,
  title  = {DeVAR: Low-Dose CT Denoising via Visual Autoregressive Modeling},
  author = {Xizhuo Zhang and Yannian Gu and Zhongzhen Huang and Shaoting Zhang and Xiaofan Zhang},
  journal= {arXiv preprint arXiv:2606.28453},
  year   = {2026}
}