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Main Authors: Igelbrink, Felix, Renz, Marian, Günther, Martin, Powell, Piper, Niecksch, Lennart, Lima, Oscar, Atzmueller, Martin, Hertzberg, Joachim
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2411.18147
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author Igelbrink, Felix
Renz, Marian
Günther, Martin
Powell, Piper
Niecksch, Lennart
Lima, Oscar
Atzmueller, Martin
Hertzberg, Joachim
author_facet Igelbrink, Felix
Renz, Marian
Günther, Martin
Powell, Piper
Niecksch, Lennart
Lima, Oscar
Atzmueller, Martin
Hertzberg, Joachim
contents Semantic mapping is a key component of robots operating in and interacting with objects in structured environments. Traditionally, geometric and knowledge representations within a semantic map have only been loosely integrated. However, recent advances in deep learning now allow full integration of prior knowledge, represented as knowledge graphs or language concepts, into sensor data processing and semantic mapping pipelines. Semantic scene graphs and language models enable modern semantic mapping approaches to incorporate graph-based prior knowledge or to leverage the rich information in human language both during and after the mapping process. This has sparked substantial advances in semantic mapping, leading to previously impossible novel applications. This survey reviews these recent developments comprehensively, with a focus on online integration of knowledge into semantic mapping. We specifically focus on methods using semantic scene graphs for integrating symbolic prior knowledge and language models for respective capture of implicit common-sense knowledge and natural language concepts
format Preprint
id arxiv_https___arxiv_org_abs_2411_18147
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Online Knowledge Integration for 3D Semantic Mapping: A Survey
Igelbrink, Felix
Renz, Marian
Günther, Martin
Powell, Piper
Niecksch, Lennart
Lima, Oscar
Atzmueller, Martin
Hertzberg, Joachim
Robotics
Computer Vision and Pattern Recognition
Machine Learning
Semantic mapping is a key component of robots operating in and interacting with objects in structured environments. Traditionally, geometric and knowledge representations within a semantic map have only been loosely integrated. However, recent advances in deep learning now allow full integration of prior knowledge, represented as knowledge graphs or language concepts, into sensor data processing and semantic mapping pipelines. Semantic scene graphs and language models enable modern semantic mapping approaches to incorporate graph-based prior knowledge or to leverage the rich information in human language both during and after the mapping process. This has sparked substantial advances in semantic mapping, leading to previously impossible novel applications. This survey reviews these recent developments comprehensively, with a focus on online integration of knowledge into semantic mapping. We specifically focus on methods using semantic scene graphs for integrating symbolic prior knowledge and language models for respective capture of implicit common-sense knowledge and natural language concepts
title Online Knowledge Integration for 3D Semantic Mapping: A Survey
topic Robotics
Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2411.18147