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Autores principales: Ma, Gang, Wei, Hui
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2404.13842
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author Ma, Gang
Wei, Hui
author_facet Ma, Gang
Wei, Hui
contents Over the years, scene understanding has attracted a growing interest in computer vision, providing the semantic and physical scene information necessary for robots to complete some particular tasks autonomously. In 3D scenes, rich spatial geometric and topological information are often ignored by RGB-based approaches for scene understanding. In this study, we develop a bottom-up approach for scene understanding that infers support relations between objects from a point cloud. Our approach utilizes the spatial topology information of the plane pairs in the scene, consisting of three major steps. 1) Detection of pairwise spatial configuration: dividing primitive pairs into local support connection and local inner connection; 2) primitive classification: a combinatorial optimization method applied to classify primitives; and 3) support relations inference and hierarchy graph construction: bottom-up support relations inference and scene hierarchy graph construction containing primitive level and object level. Through experiments, we demonstrate that the algorithm achieves excellent performance in primitive classification and support relations inference. Additionally, we show that the scene hierarchy graph contains rich geometric and topological information of objects, and it possesses great scalability for scene understanding.
format Preprint
id arxiv_https___arxiv_org_abs_2404_13842
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle On Support Relations Inference and Scene Hierarchy Graph Construction from Point Cloud in Clustered Environments
Ma, Gang
Wei, Hui
Computer Vision and Pattern Recognition
Computational Geometry
Over the years, scene understanding has attracted a growing interest in computer vision, providing the semantic and physical scene information necessary for robots to complete some particular tasks autonomously. In 3D scenes, rich spatial geometric and topological information are often ignored by RGB-based approaches for scene understanding. In this study, we develop a bottom-up approach for scene understanding that infers support relations between objects from a point cloud. Our approach utilizes the spatial topology information of the plane pairs in the scene, consisting of three major steps. 1) Detection of pairwise spatial configuration: dividing primitive pairs into local support connection and local inner connection; 2) primitive classification: a combinatorial optimization method applied to classify primitives; and 3) support relations inference and hierarchy graph construction: bottom-up support relations inference and scene hierarchy graph construction containing primitive level and object level. Through experiments, we demonstrate that the algorithm achieves excellent performance in primitive classification and support relations inference. Additionally, we show that the scene hierarchy graph contains rich geometric and topological information of objects, and it possesses great scalability for scene understanding.
title On Support Relations Inference and Scene Hierarchy Graph Construction from Point Cloud in Clustered Environments
topic Computer Vision and Pattern Recognition
Computational Geometry
url https://arxiv.org/abs/2404.13842