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Main Authors: Wang, Weimin, Deng, Yingxu, Li, Zezeng, Liu, Yu, Lei, Na
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2407.11610
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author Wang, Weimin
Deng, Yingxu
Li, Zezeng
Liu, Yu
Lei, Na
author_facet Wang, Weimin
Deng, Yingxu
Li, Zezeng
Liu, Yu
Lei, Na
contents This paper introduces a novel method for reconstructing meshes from sparse point clouds by predicting edge connection. Existing implicit methods usually produce superior smooth and watertight meshes due to the isosurface extraction algorithms~(e.g., Marching Cubes). However, these methods become memory and computationally intensive with increasing resolution. Explicit methods are more efficient by directly forming the face from points. Nevertheless, the challenge of selecting appropriate faces from enormous candidates often leads to undesirable faces and holes. Moreover, the reconstruction performance of both approaches tends to degrade when the point cloud gets sparse. To this end, we propose MEsh Reconstruction via edGE~(MergeNet), which converts mesh reconstruction into local connectivity prediction problems. Specifically, MergeNet learns to extract the features of candidate edges and regress their distances to the underlying surface. Consequently, the predicted distance is utilized to filter out edges that lay on surfaces. Finally, the meshes are reconstructed by refining the triangulations formed by these edges. Extensive experiments on synthetic and real-scanned datasets demonstrate the superiority of MergeNet to SoTA explicit methods.
format Preprint
id arxiv_https___arxiv_org_abs_2407_11610
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle MergeNet: Explicit Mesh Reconstruction from Sparse Point Clouds via Edge Prediction
Wang, Weimin
Deng, Yingxu
Li, Zezeng
Liu, Yu
Lei, Na
Computer Vision and Pattern Recognition
This paper introduces a novel method for reconstructing meshes from sparse point clouds by predicting edge connection. Existing implicit methods usually produce superior smooth and watertight meshes due to the isosurface extraction algorithms~(e.g., Marching Cubes). However, these methods become memory and computationally intensive with increasing resolution. Explicit methods are more efficient by directly forming the face from points. Nevertheless, the challenge of selecting appropriate faces from enormous candidates often leads to undesirable faces and holes. Moreover, the reconstruction performance of both approaches tends to degrade when the point cloud gets sparse. To this end, we propose MEsh Reconstruction via edGE~(MergeNet), which converts mesh reconstruction into local connectivity prediction problems. Specifically, MergeNet learns to extract the features of candidate edges and regress their distances to the underlying surface. Consequently, the predicted distance is utilized to filter out edges that lay on surfaces. Finally, the meshes are reconstructed by refining the triangulations formed by these edges. Extensive experiments on synthetic and real-scanned datasets demonstrate the superiority of MergeNet to SoTA explicit methods.
title MergeNet: Explicit Mesh Reconstruction from Sparse Point Clouds via Edge Prediction
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2407.11610