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Main Authors: Li, Jiahan, Cheng, Chaoran, Ma, Jianzhu, Liu, Ge
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2411.17788
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author Li, Jiahan
Cheng, Chaoran
Ma, Jianzhu
Liu, Ge
author_facet Li, Jiahan
Cheng, Chaoran
Ma, Jianzhu
Liu, Ge
contents Shape assembly, which aims to reassemble separate parts into a complete object, has gained significant interest in recent years. Existing methods primarily rely on networks to predict the poses of individual parts, but often fail to effectively capture the geometric interactions between the parts and their poses. In this paper, we present the Geometric Point Attention Transformer (GPAT), a network specifically designed to address the challenges of reasoning about geometric relationships. In the geometric point attention module, we integrate both global shape information and local pairwise geometric features, along with poses represented as rotation and translation vectors for each part. To enable iterative updates and dynamic reasoning, we introduce a geometric recycling scheme, where each prediction is fed into the next iteration for refinement. We evaluate our model on both the semantic and geometric assembly tasks, showing that it outperforms previous methods in absolute pose estimation, achieving accurate pose predictions and high alignment accuracy.
format Preprint
id arxiv_https___arxiv_org_abs_2411_17788
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Geometric Point Attention Transformer for 3D Shape Reassembly
Li, Jiahan
Cheng, Chaoran
Ma, Jianzhu
Liu, Ge
Computer Vision and Pattern Recognition
Artificial Intelligence
Machine Learning
Shape assembly, which aims to reassemble separate parts into a complete object, has gained significant interest in recent years. Existing methods primarily rely on networks to predict the poses of individual parts, but often fail to effectively capture the geometric interactions between the parts and their poses. In this paper, we present the Geometric Point Attention Transformer (GPAT), a network specifically designed to address the challenges of reasoning about geometric relationships. In the geometric point attention module, we integrate both global shape information and local pairwise geometric features, along with poses represented as rotation and translation vectors for each part. To enable iterative updates and dynamic reasoning, we introduce a geometric recycling scheme, where each prediction is fed into the next iteration for refinement. We evaluate our model on both the semantic and geometric assembly tasks, showing that it outperforms previous methods in absolute pose estimation, achieving accurate pose predictions and high alignment accuracy.
title Geometric Point Attention Transformer for 3D Shape Reassembly
topic Computer Vision and Pattern Recognition
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2411.17788