AI RESEARCH

Not All Points Are Equal: Uncertainty-Aware 4D LiDAR Scene Synthesis

arXiv CS.CV

ArXi:2606.02510v1 Announce Type: new Constructing faithful 4D worlds from LiDAR-acquired sequences is crucial for embodied AI, yet current generative frameworks apply uniform modeling capacity across all spatial regions. This ignores that perceptual difficulty varies dramatically within a single scan: distant surfaces, occluded boundaries, and small-scale objects carry far higher uncertainty than well-observed structures. We present U4D, a new framework that explicitly leverages spatial uncertainty to guide LiDAR scene generation in a "hard-to-easy" schedule.