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RP-SG: Relation Prediction in 3D Scene Graphs for Unobserved Objects Localization

Zhongmou Ying, Xianfeng Yuan, Baojiang Yang, Yong Song, Qingyang Xu, Fengyu Zhou, Weihua Sheng

发表年份
2023
引用次数
2

摘要

The ability to search for objects is a fundamental prerequisite for mobile robots when addressing a wide range of automation tasks. However, how to effectively estimate the positions of unobserved objects in a continuously changing environment remains an open challenge. Previous works have utilized probabilistic models to estimate the co-occurrence property between the target object and the observed landmark objects in a scene. However, few approaches can predict the precise spatial relations between objects based on a specific scene configuration. In this letter, we propose a novel unobserved object localization framework that achieves context-specific relation prediction based on the particular configuration of a scene. First, we leverage a 3D scene graph as a compact representation of the environment and propose a relation prediction model based on graph neural networks. This model can effectively interpret the information provided by the 3D scene graph and make accurate relation predictions. Second, to address the challenge of a high number of non-existent links between objects in the scene graph, we introduce a novel loss function that can better address imbalanced training data. Additionally, we propose an evaluation framework to comprehensively assess whether the relation prediction model benefits object search tasks. Comprehensive evaluation results obtained on public datasets and real-world scenes reveal the superiority of our method over competing approaches.

关键词

Scene graphComputer scienceLeverage (statistics)Relation (database)Artificial intelligenceLandmarkGraphProbabilistic logicRepresentation (politics)Object (grammar)

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