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 )
Description
The supplementary file contains extra quantitative evaluation results, parameter sensitivity analysis, and training stability analysis for a more comprehensive understanding of our paper. Visualization examples of the intricate augmented samples and features are also provided for an intuitive explanation of the functionality of the proposed intricate orientation mining strategy. Furthermore, we conduct a theoretical analysis to explain the mechanism of the proposed method formally. Review our Supplemental Items documentation for more information.
Description
The supplementary file contains extra quantitative evaluation results, parameter sensitivity analysis, and training stability analysis for a more comprehensive understanding of our paper. Visualization examples of the intricate augmented samples and features are also provided for an intuitive explanation of the functionality of the proposed intricate orientation mining strategy. Furthermore, we conduct a theoretical analysis to explain the mechanism of the proposed method formally. Review our Supplemental Items documentation for more information.