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UniPre3D: Unified Pre-training of 3D Point Cloud Models with Cross-Modal Gaussian Splatting

About

The scale diversity of point cloud data presents significant challenges in developing unified representation learning techniques for 3D vision. Currently, there are few unified 3D models, and no existing pre-training method is equally effective for both object- and scene-level point clouds. In this paper, we introduce UniPre3D, the first unified pre-training method that can be seamlessly applied to point clouds of any scale and 3D models of any architecture. Our approach predicts Gaussian primitives as the pre-training task and employs differentiable Gaussian splatting to render images, enabling precise pixel-level supervision and end-to-end optimization. To further regulate the complexity of the pre-training task and direct the model's focus toward geometric structures, we integrate 2D features from pre-trained image models to incorporate well-established texture knowledge. We validate the universal effectiveness of our proposed method through extensive experiments across a variety of object- and scene-level tasks, using diverse point cloud models as backbones. Code is available at https://github.com/wangzy22/UniPre3D.

Ziyi Wang, Yanran Zhang, Jie Zhou, Jiwen Lu• 2025

Related benchmarks

TaskDatasetResultRank
Part SegmentationShapeNetPart (test)--
312
Object ClassificationScanObjectNN OBJ_BG
Accuracy93.29
215
Object ClassificationScanObjectNN PB_T50_RS
Accuracy93.4
195
3D Semantic SegmentationScanNet V2 (val)
mIoU77.6
171
Object ClassificationScanObjectNN OBJ_ONLY
Overall Accuracy92.08
166
Semantic segmentationScanNet200 (val)
mIoU36
74
Instance SegmentationScanNet200 (val)
mAP@5029.2
53
Semantic segmentationScanNet200 v2 (val)
mIoU36
27
3D Object ClassificationScanObjectNN PB_T50_RS (FULL Protocol)
Accuracy87.93
25
Semantic segmentationScanNet20 (val)
mIoU77.6
24
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