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Main Authors: Hu, Naiwen, Cheng, Haozhe, Xie, Yifan, Shi, Pengcheng, Zhu, Jihua
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2409.15810
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author Hu, Naiwen
Cheng, Haozhe
Xie, Yifan
Shi, Pengcheng
Zhu, Jihua
author_facet Hu, Naiwen
Cheng, Haozhe
Xie, Yifan
Shi, Pengcheng
Zhu, Jihua
contents 3D contrastive representation learning has exhibited remarkable efficacy across various downstream tasks. However, existing contrastive learning paradigms based on cosine similarity fail to deeply explore the potential intra-modal hierarchical and cross-modal semantic correlations about multi-modal data in Euclidean space. In response, we seek solutions in hyperbolic space and propose a hyperbolic image-and-pointcloud contrastive learning method (HyperIPC). For the intra-modal branch, we rely on the intrinsic geometric structure to explore the hyperbolic embedding representation of point cloud to capture invariant features. For the cross-modal branch, we leverage images to guide the point cloud in establishing strong semantic hierarchical correlations. Empirical experiments underscore the outstanding classification performance of HyperIPC. Notably, HyperIPC enhances object classification results by 2.8% and few-shot classification outcomes by 5.9% on ScanObjectNN compared to the baseline. Furthermore, ablation studies and confirmatory testing validate the rationality of HyperIPC's parameter settings and the effectiveness of its submodules.
format Preprint
id arxiv_https___arxiv_org_abs_2409_15810
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Hyperbolic Image-and-Pointcloud Contrastive Learning for 3D Classification
Hu, Naiwen
Cheng, Haozhe
Xie, Yifan
Shi, Pengcheng
Zhu, Jihua
Computer Vision and Pattern Recognition
3D contrastive representation learning has exhibited remarkable efficacy across various downstream tasks. However, existing contrastive learning paradigms based on cosine similarity fail to deeply explore the potential intra-modal hierarchical and cross-modal semantic correlations about multi-modal data in Euclidean space. In response, we seek solutions in hyperbolic space and propose a hyperbolic image-and-pointcloud contrastive learning method (HyperIPC). For the intra-modal branch, we rely on the intrinsic geometric structure to explore the hyperbolic embedding representation of point cloud to capture invariant features. For the cross-modal branch, we leverage images to guide the point cloud in establishing strong semantic hierarchical correlations. Empirical experiments underscore the outstanding classification performance of HyperIPC. Notably, HyperIPC enhances object classification results by 2.8% and few-shot classification outcomes by 5.9% on ScanObjectNN compared to the baseline. Furthermore, ablation studies and confirmatory testing validate the rationality of HyperIPC's parameter settings and the effectiveness of its submodules.
title Hyperbolic Image-and-Pointcloud Contrastive Learning for 3D Classification
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2409.15810