Abstract:
The vulnerability of 3D point cloud analysis to unpredictable rotations poses an open yet challenging problem: orientation-aware 3D domain generalization. Cross-domain ro...Show MoreMetadata
Abstract:
The vulnerability of 3D point cloud analysis to unpredictable rotations poses an open yet challenging problem: orientation-aware 3D domain generalization. Cross-domain robustness and adaptability of 3D representations are crucial but not easily achieved through rotation augmentation. Motivated by the inherent advantages of intricate orientations in enhancing generalizability, we propose an innovative rotation-adaptive domain generalization framework for 3D point cloud analysis. Our approach aims to alleviate orientational shifts by leveraging intricate samples in an iterative learning process. Specifically, we identify the most challenging rotation for each point cloud and construct an intricate orientation set by optimizing intricate orientations. Subsequently, we employ an orientation-aware contrastive learning framework that incorporates an orientation consistency loss and a margin separation loss, enabling effective learning of categorically discriminative and generalizable features with rotation consistency. Extensive experiments and ablations conducted on 3D cross-domain benchmarks firmly establish the state-of-the-art performance of our proposed approach in the context of orientation-aware 3D domain generalization.
Published in: IEEE Transactions on Pattern Analysis and Machine Intelligence ( Early Access )
3D Shape Classification by Registration: Neural-Network-Free and Training-Free
Chang Gou,Yuanqu Mou,Wenjie Li,Neetesh Purohit,Suneel Yadav,Haiyang Bai,Xu Zhang,Lijun Chen
MV-CLIP: Multi-View CLIP for Zero-shot 3D Shape Recognition
Dan Song,Xinwei Fu,Ning Liu,Weizhi Nie,Wenhui Li,Lanjun Wang,You Yang,An-An Liu
Contrastive Learning for Self-Supervised Pre-Training of Point Cloud Segmentation Networks With Image Data
Andrej Janda,Brandon Wagstaff,Edwin G. Ng,Jonathan Kelly
Achieving Both Model Accuracy and Robustness by Adversarial Training with Batch Norm Shaping
Brian Zhang,Shiqing Ma
Clarifying Myths About the Relationship Between Shape Bias, Accuracy, and Robustness
Zahra Golpayegani,Patrick St-Amant,Nizar Bouguila
POINTACL: Adversarial Contrastive Learning for Robust Point Clouds Representation Under Adversarial Attack
Junxuan Huang,Junsong Yuan,Chunming Qiao,Yatong An,Cheng Lu,Chen Bai
PV-PASBLS: A Multimodal Point-View Fusion Model Based on Parameter Adaptive Stacked Broad Learning System for 3D Shape Recognition
Zhiyuan Liao,Chunquan Li,Hui Jin,Beike Li,Zhijun Zhang,Junzhi Yu,Peter X. Liu
Coarse to Fine Rate Control For Region-Based 3D Point Cloud Compression
Qi Liu,Hui Yuan,Raouf Hamzaoui,Honglei Su
Generalized Deep 3D Shape Prior via Part-Discretized Diffusion Process
Yuhan Li,Yishun Dou,Xuanhong Chen,Bingbing Ni,Yilin Sun,Yutian Liu,Fuzhen Wang
FLOAT: Fast Learnable Once-for-All Adversarial Training for Tunable Trade-off between Accuracy and Robustness
Souvik Kundu,Sairam Sundaresan,Massoud Pedram,Peter A. Beerel