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Papers/DSPoint: Dual-scale Point Cloud Recognition with High-freq...

DSPoint: Dual-scale Point Cloud Recognition with High-frequency Fusion

Renrui Zhang, Ziyao Zeng, Ziyu Guo, Xinben Gao, Kexue Fu, Jianbo Shi

2021-11-19Vocal Bursts Intensity PredictionScene SegmentationSemantic Segmentation3D Part Segmentation3D Shape Classification3D Point Cloud Classification
PaperPDFCode(official)

Abstract

Point cloud processing is a challenging task due to its sparsity and irregularity. Prior works introduce delicate designs on either local feature aggregator or global geometric architecture, but few combine both advantages. We propose Dual-Scale Point Cloud Recognition with High-frequency Fusion (DSPoint) to extract local-global features by concurrently operating on voxels and points. We reverse the conventional design of applying convolution on voxels and attention to points. Specifically, we disentangle point features through channel dimension for dual-scale processing: one by point-wise convolution for fine-grained geometry parsing, the other by voxel-wise global attention for long-range structural exploration. We design a co-attention fusion module for feature alignment to blend local-global modalities, which conducts inter-scale cross-modality interaction by communicating high-frequency coordinates information. Experiments and ablations on widely-adopted ModelNet40, ShapeNet, and S3DIS demonstrate the state-of-the-art performance of our DSPoint.

Results

TaskDatasetMetricValueModel
Semantic SegmentationS3DISMean IoU63.3DSPoint
Semantic SegmentationS3DISmAcc70.9DSPoint
Semantic SegmentationShapeNet-PartClass Average IoU83.9DSPoint
Semantic SegmentationShapeNet-PartInstance Average IoU85.8DSPoint
Shape Representation Of 3D Point CloudsModelNet40Overall Accuracy93.5DSPoint
3D Point Cloud ClassificationModelNet40Overall Accuracy93.5DSPoint
10-shot image generationS3DISMean IoU63.3DSPoint
10-shot image generationS3DISmAcc70.9DSPoint
10-shot image generationShapeNet-PartClass Average IoU83.9DSPoint
10-shot image generationShapeNet-PartInstance Average IoU85.8DSPoint
3D Point Cloud ReconstructionModelNet40Overall Accuracy93.5DSPoint

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