AI RESEARCH
Weakly-Supervised Lung Nodule Segmentation via Training-Free Guidance of 3D Rectified Flow
arXiv CS.CV
•
ArXi:2604.08313v1 Announce Type: new Dense annotations, such as segmentation masks, are expensive and time-consuming to obtain, especially for 3D medical images where expert voxel-wise labeling is required. Weakly supervised approaches aim to address this limitation, but often rely on attribution-based methods that struggle to accurately capture small structures such as lung nodules. In this paper, we propose a weakly-supervised segmentation method for lung nodules by combining pretrained state-of-the-art rectified flow and predictor models in a plug-and-play manner. Our approach uses.