论文标题
规范胶囊:规范姿势的自制胶囊
Canonical Capsules: Self-Supervised Capsules in Canonical Pose
论文作者
论文摘要
我们为3D点云提出了一个自制的胶囊架构。我们通过置换等值的关注来计算对象的胶囊分解,并通过用成对的随机旋转对象训练该过程。我们的关键思想是将注意力面罩汇总到语义关键点中,并使用这些掩盖来监督满足胶囊不变性/等效性属性的分解。这不仅可以训练语义上一致的分解,而且还使我们能够学习一个可以以对象为中心推理的规范化操作。要培训我们的神经网络,我们不需要分类标签也不需要手动对准的培训数据集。然而,通过以一种自我监督的方式学习以对象为中心的表示,我们的方法在3D点云重建,规范化和无监督的分类上优于最先进的。
We propose a self-supervised capsule architecture for 3D point clouds. We compute capsule decompositions of objects through permutation-equivariant attention, and self-supervise the process by training with pairs of randomly rotated objects. Our key idea is to aggregate the attention masks into semantic keypoints, and use these to supervise a decomposition that satisfies the capsule invariance/equivariance properties. This not only enables the training of a semantically consistent decomposition, but also allows us to learn a canonicalization operation that enables object-centric reasoning. To train our neural network we require neither classification labels nor manually-aligned training datasets. Yet, by learning an object-centric representation in a self-supervised manner, our method outperforms the state-of-the-art on 3D point cloud reconstruction, canonicalization, and unsupervised classification.