236 research outputs found

    Quantitative Volume Space Form Rigidity Under Lower Ricci Curvature Bound

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    Let MM be a compact nn-manifold of Ric⁑Mβ‰₯(nβˆ’1)H\operatorname{Ric}_M\ge (n-1)H (HH is a constant). We are concerned with the following space form rigidity: MM is isometric to a space form of constant curvature HH under either of the following conditions: (i) There is ρ>0\rho>0 such that for any x∈Mx\in M, the open ρ\rho-ball at xβˆ—x^* in the (local) Riemannian universal covering space, (UΟβˆ—,xβˆ—)β†’(Bρ(x),x)(U^*_\rho,x^*)\to (B_\rho(x),x), has the maximal volume i.e., the volume of a ρ\rho-ball in the simply connected nn-space form of curvature HH. (ii) For H=βˆ’1H=-1, the volume entropy of MM is maximal i.e. nβˆ’1n-1 ([LW1]). The main results of this paper are quantitative space form rigidity i.e., statements that MM is diffeomorphic and close in the Gromov-Hausdorff topology to a space form of constant curvature HH, if MM almost satisfies, under some additional condition, the above maximal volume condition. For H=1H=1, the quantitative spherical space form rigidity improves and generalizes the diffeomorphic sphere theorem in [CC2].Comment: The only change from the early version is an improvement on Theorem A: we replace the non-collapsing condition on MM by on M~\tilde M (the Riemannian universal cover), and the corresponding modification is adding "subsection c" in Section

    Multi-task 3D building understanding with multi-modal pretraining

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    This paper explores various learning strategies for 3D building type classification and part segmentation on the BuildingNet dataset. ULIP with PointNeXt and PointNeXt segmentation are extended for the classification and segmentation task on BuildingNet dataset. The best multi-task PointNeXt-s model with multi-modal pretraining achieves 59.36 overall accuracy for 3D building type classification, and 31.68 PartIoU for 3D building part segmentation on validation split. The final PointNeXt XL model achieves 31.33 PartIoU and 22.78 ShapeIoU on test split for BuildingNet-Points segmentation, which significantly improved over PointNet++ model reported from BuildingNet paper, and it won the 1st place in the BuildingNet challenge at CVPR23 StruCo3D workshop.Comment: 8 pages, 9 figures, 9 table
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