Unsupervised 3D Learning for Shape Analysis via Multiresolution Instance
Discrimination
- URL: http://arxiv.org/abs/2008.01068v2
- Date: Fri, 12 Mar 2021 02:49:28 GMT
- Title: Unsupervised 3D Learning for Shape Analysis via Multiresolution Instance
Discrimination
- Authors: Peng-Shuai Wang, Yu-Qi Yang, Qian-Fang Zou, Zhirong Wu, Yang Liu, Xin
Tong
- Abstract summary: We propose an unsupervised method for learning a generic and efficient shape encoding network for different shape analysis tasks.
We adapt HR-Net to octree-based convolutional neural networks for jointly encoding shape and point features.
Our method achieves competitive performance to supervised methods, especially in tasks with a small labeled dataset.
- Score: 27.976848222058187
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Although unsupervised feature learning has demonstrated its advantages to
reducing the workload of data labeling and network design in many fields,
existing unsupervised 3D learning methods still cannot offer a generic network
for various shape analysis tasks with competitive performance to supervised
methods. In this paper, we propose an unsupervised method for learning a
generic and efficient shape encoding network for different shape analysis
tasks. The key idea of our method is to jointly encode and learn shape and
point features from unlabeled 3D point clouds. For this purpose, we adapt
HR-Net to octree-based convolutional neural networks for jointly encoding shape
and point features with fused multiresolution subnetworks and design a
simple-yet-efficient Multiresolution Instance Discrimination (MID) loss for
jointly learning the shape and point features. Our network takes a 3D point
cloud as input and output both shape and point features. After training, the
network is concatenated with simple task-specific back-end layers and
fine-tuned for different shape analysis tasks. We evaluate the efficacy and
generality of our method and validate our network and loss design with a set of
shape analysis tasks, including shape classification, semantic shape
segmentation, as well as shape registration tasks. With simple back-ends, our
network demonstrates the best performance among all unsupervised methods and
achieves competitive performance to supervised methods, especially in tasks
with a small labeled dataset. For fine-grained shape segmentation, our method
even surpasses existing supervised methods by a large margin.
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