AI RESEARCH

SynFlow: Scaling Up LiDAR Scene Flow Estimation with Synthetic Data

arXiv CS.CV

ArXi:2604.09411v1 Announce Type: new Reliable 3D dynamic perception requires models that can anticipate motion beyond predefined categories, yet progress is hindered by the scarcity of dense, high-quality motion annotations. While self-supervision on unlabeled real data offers a path forward, empirical evidence suggests that scaling unlabeled data fails to close the performance gap due to noisy proxy signals. In this paper, we propose a shift in paradigm: learning robust real-world motion priors entirely from scalable simulation. We.