论文标题

带有内存先验对比网络的几杆单视3D重建

Few-shot Single-view 3D Reconstruction with Memory Prior Contrastive Network

论文作者

Xing, Zhen, Chen, Yijiang, Ling, Zhixin, Zhou, Xiangdong, Xiang, Yu

论文摘要

3D重建基于几乎没有学习的新型类别在现实世界中具有吸引力,并吸引了增加的研究兴趣。先前的方法主要集中于如何为不同类别设计形状的先验模型。他们在看不见的类别上的表现不是很具竞争力。在本文中,我们提出了一个内存的先验对比网络(MPCN),该网络可以在基于几次学习的3D重建框架中存储形状的先验知识。使用形状记忆,提出了一个多头注意模块以捕获候选形状的不同部分,并将这些部分融合在一起,以指导新型类别的3D重建。此外,我们引入了一种3D吸引的对比学习方法,该方法不仅可以补充内存网络的检索精度,而且还可以更好地组织下游任务的图像功能。与以前的几次3D重建方法相比,MPCN可以处理类间变异性而无需类别注释。基准合成数据集和Pascal3D+现实世界数据集的实验结果表明,我们的模型的表现明显优于当前的最新方法。

3D reconstruction of novel categories based on few-shot learning is appealing in real-world applications and attracts increasing research interests. Previous approaches mainly focus on how to design shape prior models for different categories. Their performance on unseen categories is not very competitive. In this paper, we present a Memory Prior Contrastive Network (MPCN) that can store shape prior knowledge in a few-shot learning based 3D reconstruction framework. With the shape memory, a multi-head attention module is proposed to capture different parts of a candidate shape prior and fuse these parts together to guide 3D reconstruction of novel categories. Besides, we introduce a 3D-aware contrastive learning method, which can not only complement the retrieval accuracy of memory network, but also better organize image features for downstream tasks. Compared with previous few-shot 3D reconstruction methods, MPCN can handle the inter-class variability without category annotations. Experimental results on a benchmark synthetic dataset and the Pascal3D+ real-world dataset show that our model outperforms the current state-of-the-art methods significantly.

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