Enhancing Performance of Point Cloud Completion Networks with Consistency Loss
Kevin Tirta Wijaya, Christofel Rio Goenawan, Seung-Hyun Kong

TL;DR
This paper introduces a novel consistency loss for point cloud completion networks that improves their accuracy by ensuring coherent outputs for similar incomplete inputs, without altering network architecture.
Contribution
The work proposes a new completion consistency loss to address the one-to-many mapping issue in point cloud completion, enhancing existing networks' performance without modifying their design.
Findings
Improved completion accuracy across multiple datasets.
State-of-the-art results on the MVP dataset.
No impact on inference speed.
Abstract
Point cloud completion networks are conventionally trained to minimize the disparities between the completed point cloud and the ground-truth counterpart. However, an incomplete object-level point cloud can have multiple valid completion solutions when it is examined in isolation. This one-to-many mapping issue can cause contradictory supervision signals to the network because the loss function may produce different values for identical input-output pairs of the network. In many cases, this issue could adversely affect the network optimization process. In this work, we propose to enhance the conventional learning objective using a novel completion consistency loss to mitigate the one-to-many mapping problem. Specifically, the proposed consistency loss ensure that a point cloud completion network generates a coherent completion solution for incomplete objects originating from the same…
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Taxonomy
Topics3D Shape Modeling and Analysis
