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Papers/Challenging the Universal Representation of Deep Models fo...

Challenging the Universal Representation of Deep Models for 3D Point Cloud Registration

David Bojanić, Kristijan Bartol, Josep Forest, Stefan Gumhold, Tomislav Petković, Tomislav Pribanić

2022-11-29Point Cloud Registration
PaperPDFCode(official)Code(official)

Abstract

Learning universal representations across different applications domain is an open research problem. In fact, finding universal architecture within the same application but across different types of datasets is still unsolved problem too, especially in applications involving processing 3D point clouds. In this work we experimentally test several state-of-the-art learning-based methods for 3D point cloud registration against the proposed non-learning baseline registration method. The proposed method either outperforms or achieves comparable results w.r.t. learning based methods. In addition, we propose a dataset on which learning based methods have a hard time to generalize. Our proposed method and dataset, along with the provided experiments, can be used in further research in studying effective solutions for universal representations. Our source code is available at: github.com/DavidBoja/greedy-grid-search.

Results

TaskDatasetMetricValueModel
Point Cloud RegistrationKITTI (trained on 3DMatch)Success Rate90.27Greedy Grid Search
Point Cloud RegistrationETH (trained on 3DMatch)Feature Matching Recall0.784Greedy Grid Search
Point Cloud RegistrationFPv1RRE (degrees)0.014Greedy Grid Search
Point Cloud RegistrationFPv1RTE (cm)0.009Greedy Grid Search
Point Cloud RegistrationFPv1Recall (3cm, 10 degrees)92.81Greedy Grid Search
3D Point Cloud InterpolationKITTI (trained on 3DMatch)Success Rate90.27Greedy Grid Search
3D Point Cloud InterpolationETH (trained on 3DMatch)Feature Matching Recall0.784Greedy Grid Search
3D Point Cloud InterpolationFPv1RRE (degrees)0.014Greedy Grid Search
3D Point Cloud InterpolationFPv1RTE (cm)0.009Greedy Grid Search
3D Point Cloud InterpolationFPv1Recall (3cm, 10 degrees)92.81Greedy Grid Search

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