CVMar 2, 2023

ACL-SPC: Adaptive Closed-Loop system for Self-Supervised Point Cloud Completion

arXiv:2303.01979v320 citationsh-index: 22Has Code
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This addresses the domain gap issue in point cloud completion for applications like robotics and autonomous driving, offering a novel self-supervised approach.

The paper tackles the problem of point cloud completion in real-world scenarios by proposing ACL-SPC, a self-supervised framework that trains and tests on the same data, achieving superior performance on real-world datasets compared to supervised methods trained on synthetic data.

Point cloud completion addresses filling in the missing parts of a partial point cloud obtained from depth sensors and generating a complete point cloud. Although there has been steep progress in the supervised methods on the synthetic point cloud completion task, it is hardly applicable in real-world scenarios due to the domain gap between the synthetic and real-world datasets or the requirement of prior information. To overcome these limitations, we propose a novel self-supervised framework ACL-SPC for point cloud completion to train and test on the same data. ACL-SPC takes a single partial input and attempts to output the complete point cloud using an adaptive closed-loop (ACL) system that enforces the output same for the variation of an input. We evaluate our proposed ACL-SPC on various datasets to prove that it can successfully learn to complete a partial point cloud as the first self-supervised scheme. Results show that our method is comparable with unsupervised methods and achieves superior performance on the real-world dataset compared to the supervised methods trained on the synthetic dataset. Extensive experiments justify the necessity of self-supervised learning and the effectiveness of our proposed method for the real-world point cloud completion task. The code is publicly available from https://github.com/Sangminhong/ACL-SPC_PyTorch

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