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引用次数: 0
摘要
自我监督表征学习(SSRL)在点云理解领域受到越来越多的关注,以应对三维数据稀缺和标注成本高所带来的挑战。本文介绍的 PCExpert 是一种新颖的 SSRL 方法,它将点云重新解释为 "专用图像"。这种概念上的转变使 PCExpert 能够以更直接、更深入的方式利用从大规模图像模式中获得的知识,具体做法是在多向变换器架构中与预先训练好的图像编码器广泛共享参数。参数共享策略与用于预训练的额外借口任务(即变换估计)相结合,使 PCExpert 在各种任务中的表现优于同类技术,同时显著减少了可训练参数的数量。值得注意的是,PCExpert 在 LINEAR 微调下的表现(例如,在 ScanObjectNN 上的总体准确率为 90.02%)已经接近在 FULL 模型微调下的结果(92.66%),证明了其有效的表示能力。
Point Clouds are Specialized Images: A Knowledge Transfer Approach for 3D Understanding
Self-supervised representation learning (SSRL) has gained increasing attention in point cloud understanding, in addressing the challenges posed by 3D data scarcity and high annotation costs. This paper presents PCExpert, a novel SSRL approach that reinterprets point clouds as “specialized images”. This conceptual shift allows PCExpert to leverage knowledge derived from large-scale image modality in a more direct and deeper manner, via extensively sharing the parameters with a pre-trained image encoder in a multi-way Transformer architecture. The parameter sharing strategy, combined with an additional pretext task for pre-training, i.e., transformation estimation, empowers PCExpert to outperform the state of the arts in a variety of tasks, with a remarkable reduction in the number of trainable parameters. Notably, PCExpert's performance under
LINEAR
fine-tuning (e.g., yielding a 90.02% overall accuracy on ScanObjectNN) has already closely approximated the results obtained with
FULL
model fine-tuning (92.66%), demonstrating its effective representation capability.
期刊介绍:
The IEEE Transactions on Multimedia delves into diverse aspects of multimedia technology and applications, covering circuits, networking, signal processing, systems, software, and systems integration. The scope aligns with the Fields of Interest of the sponsors, ensuring a comprehensive exploration of research in multimedia.