Self-Supervised Point Cloud Learning in Few-Shot Scenario by Point Up-Sampling and Mutual Information Neural Estimation

Jiawei Li, Yunan Huang, Yunqi Lei
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Abstract

Point cloud data is hard to obtain and time-consuming to be labelled. Self-supervised methods can utilize data without label, but it still needs large amount of data. The key to self-supervised methods lies in the design of pretext tasks. In this work, we propose a new self-supervised pretext task in few-shot learning scenario to further alleviate the data scarcity problem. Our self-supervised method learns by training the network to restore the original point cloud from the down-sampled point cloud. Although our point up-sampling pretext task as a kind of reconstruction task can ensure the learned representation contains sufficient information, it cannot guarantee its distinguishability. Thus, we introduce a Mutual Information Estimation and Maximization task to increase the distinguishability of the learned representation. Classification and segmentation results have shown that our method can learn efficient feature and increase the performance of down-stream models.
基于点上采样和互信息神经估计的少镜头场景自监督点云学习
点云数据获取困难,标记耗时长。自监督方法可以不带标签地利用数据,但仍然需要大量的数据。自我监督方法的关键在于借口任务的设计。在这项工作中,我们提出了一种新的自监督借口任务,以进一步缓解数据稀缺问题。我们的自监督方法是通过训练网络从下采样点云恢复原始点云。点上采样借口任务作为一种重构任务,虽然可以保证学习到的表征包含足够的信息,但不能保证其可分辨性。因此,我们引入互信息估计和最大化任务来提高学习表征的可分辨性。分类和分割结果表明,该方法可以有效地学习特征,提高下游模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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