DSA-SRGS:用于动态稀疏视角DSA重建的超分辨率高斯泼溅方法 / DSA-SRGS: Super-Resolution Gaussian Splatting for Dynamic Sparse-View DSA Reconstruction
1️⃣ 一句话总结
本文提出了一种名为DSA-SRGS的新方法,首次将超分辨率技术融入动态血管重建过程,通过结合高质量先验知识和自适应优化策略,成功从少量低清扫描图像中重建出细节清晰、结构精细的4D血管模型,显著提升了医学影像的诊断精度。
Digital subtraction angiography (DSA) is a key imaging technique for the auxiliary diagnosis and treatment of cerebrovascular diseases. Recent advancements in gaussian splatting and dynamic neural representations have enabled robust 3D vessel reconstruction from sparse dynamic inputs. However, these methods are fundamentally constrained by the resolution of input projections, where performing naive upsampling to enhance rendering resolution inevitably results in severe blurring and aliasing artifacts. Such lack of super-resolution capability prevents the reconstructed 4D models from recovering fine-grained vascular details and intricate branching structures, which restricts their application in precision diagnosis and treatment. To solve this problem, this paper proposes DSA-SRGS, the first super-resolution gaussian splatting framework for dynamic sparse-view DSA reconstruction. Specifically, we introduce a Multi-Fidelity Texture Learning Module that integrates high-quality priors from a fine-tuned DSA-specific super-resolution model, into the 4D reconstruction optimization. To mitigate potential hallucination artifacts from pseudo-labels, this module employs a Confidence-Aware Strategy to adaptively weight supervision signals between the original low-resolution projections and the generated high-resolution pseudo-labels. Furthermore, we develop Radiative Sub-Pixel Densification, an adaptive strategy that leverages gradient accumulation from high-resolution sub-pixel sampling to refine the 4D radiative gaussian kernels. Extensive experiments on two clinical DSA datasets demonstrate that DSA-SRGS significantly outperforms state-of-the-art methods in both quantitative metrics and qualitative visual fidelity.
DSA-SRGS:用于动态稀疏视角DSA重建的超分辨率高斯泼溅方法 / DSA-SRGS: Super-Resolution Gaussian Splatting for Dynamic Sparse-View DSA Reconstruction
本文提出了一种名为DSA-SRGS的新方法,首次将超分辨率技术融入动态血管重建过程,通过结合高质量先验知识和自适应优化策略,成功从少量低清扫描图像中重建出细节清晰、结构精细的4D血管模型,显著提升了医学影像的诊断精度。
源自 arXiv: 2603.04770