Learning robust 3D shape segmentation functions with deep neural networks has emerged as a powerful paradigm, offering promising performance in producing a consistent part segmentation of each 3D shape. Generalizing across 3D shape segmentation functions requires robust learning of priors over the respective function space and enables consistent part segmentation of shapes in presence of significant 3D structure variations. Existing generalization methods rely on extensive training of 3D shape segmentation functions on large-scale labeled datasets. In this paper, we proposed to formalize the learning of a 3D shape segmentation function space as a meta-learning problem, aiming to predict a 3D segmentation model that can be quickly adapted to new shapes with no or limited training data. More specifically, we define each task as unsupervised learning of shape-conditioned 3D segmentation function which takes as input points in 3D space and predicts the part-segment labels. The 3D segmentation function is trained by a self-supervised 3D shape reconstruction loss without the need for part labels. Also, we introduce an auxiliary deep neural network as a meta-learner which takes as input a 3D shape and predicts the prior over the respective 3D segmentation function space. We show in experiments that our meta-learning approach, denoted as Meta-3DSeg, leads to improvements on unsupervised 3D shape segmentation over the conventional designs of deep neural networks for 3D shape segmentation functions.
翻译:具有深层神经网络的 3D 形状分割功能 已经成为一个强大的范例,在生成每个 3D 形状的一致分割形状时,提供了有希望的绩效。 在整个 3D 形状分割功能中,要对各自的功能空间进行严格的前科学习,并在出现显著的 3D 结构变异的情况下对形状进行一致分割。 现有的一般化方法依赖于对大型标签数据集的 3D 形状分割功能的广泛培训。 在本文件中,我们提议将3D 形状分割功能空间的学习正式确定为元学习问题,目的是预测一个3D 形状分割模型,可以迅速适应没有或有限的培训数据的新形状。 更具体地说,我们定义每一项任务,是不受监督地学习受形状调整的 3D 形状分割函数。 3D 3D 分解功能由一个自我监督的 3D 形状分割功能构成重建损失,而无需部分标签。 另外,我们引入一个辅助的深层线分割网络,可以快速适应新的形状,而没有任何或有限的训练。