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Papers/Towards Large-scale 3D Representation Learning with Multi-...

Towards Large-scale 3D Representation Learning with Multi-dataset Point Prompt Training

Xiaoyang Wu, Zhuotao Tian, Xin Wen, Bohao Peng, Xihui Liu, Kaicheng Yu, Hengshuang Zhao

2023-08-18CVPR 2024 1Representation LearningSemantic Segmentation3D Semantic SegmentationLIDAR Semantic Segmentation
PaperPDFCode(official)

Abstract

The rapid advancement of deep learning models often attributes to their ability to leverage massive training data. In contrast, such privilege has not yet fully benefited 3D deep learning, mainly due to the limited availability of large-scale 3D datasets. Merging multiple available data sources and letting them collaboratively train a single model is a potential solution. However, due to the large domain gap between 3D point cloud datasets, such mixed supervision could adversely affect the model's performance and lead to degenerated performance (i.e., negative transfer) compared to single-dataset training. In view of this challenge, we introduce Point Prompt Training (PPT), a novel framework for multi-dataset synergistic learning in the context of 3D representation learning that supports multiple pre-training paradigms. Based on this framework, we propose Prompt-driven Normalization, which adapts the model to different datasets with domain-specific prompts and Language-guided Categorical Alignment that decently unifies the multiple-dataset label spaces by leveraging the relationship between label text. Extensive experiments verify that PPT can overcome the negative transfer associated with synergistic learning and produce generalizable representations. Notably, it achieves state-of-the-art performance on each dataset using a single weight-shared model with supervised multi-dataset training. Moreover, when served as a pre-training framework, it outperforms other pre-training approaches regarding representation quality and attains remarkable state-of-the-art performance across over ten diverse downstream tasks spanning both indoor and outdoor 3D scenarios.

Results

TaskDatasetMetricValueModel
Semantic SegmentationScanNettest mIoU76.6PPT + SparseUNet
Semantic SegmentationScanNetval mIoU76.4PPT + SparseUNet
Semantic SegmentationS3DIS Area5mAcc78.2PPT + SparseUNet
Semantic SegmentationS3DIS Area5mIoU72.7PPT + SparseUNet
Semantic SegmentationS3DIS Area5oAcc91.5PPT + SparseUNet
Semantic SegmentationS3DISMean IoU78.1PPT + SparseUNet
Semantic SegmentationS3DISmAcc85.4PPT + SparseUNet
Semantic SegmentationS3DISoAcc92.2PPT + SparseUNet
Semantic SegmentationScanNet200test mIoU33.2PPT+SparseUNet
Semantic SegmentationScanNet200val mIoU31.9PPT+SparseUNet
3D Semantic SegmentationScanNet200test mIoU33.2PPT+SparseUNet
3D Semantic SegmentationScanNet200val mIoU31.9PPT+SparseUNet
LIDAR Semantic SegmentationnuScenesval mIoU0.786PPT+SparseUNet
10-shot image generationScanNettest mIoU76.6PPT + SparseUNet
10-shot image generationScanNetval mIoU76.4PPT + SparseUNet
10-shot image generationS3DIS Area5mAcc78.2PPT + SparseUNet
10-shot image generationS3DIS Area5mIoU72.7PPT + SparseUNet
10-shot image generationS3DIS Area5oAcc91.5PPT + SparseUNet
10-shot image generationS3DISMean IoU78.1PPT + SparseUNet
10-shot image generationS3DISmAcc85.4PPT + SparseUNet
10-shot image generationS3DISoAcc92.2PPT + SparseUNet
10-shot image generationScanNet200test mIoU33.2PPT+SparseUNet
10-shot image generationScanNet200val mIoU31.9PPT+SparseUNet

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