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Autores principales: Chen, Kaiqi, Xiao, Junhao, Liu, Jialing, Tong, Qiyi, Zhang, Heng, Liu, Ruyu, Zhang, Jianhua, Ajoudani, Arash, Chen, Shengyong
Formato: Preprint
Publicado: 2022
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Acceso en línea:https://arxiv.org/abs/2209.06428
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author Chen, Kaiqi
Xiao, Junhao
Liu, Jialing
Tong, Qiyi
Zhang, Heng
Liu, Ruyu
Zhang, Jianhua
Ajoudani, Arash
Chen, Shengyong
author_facet Chen, Kaiqi
Xiao, Junhao
Liu, Jialing
Tong, Qiyi
Zhang, Heng
Liu, Ruyu
Zhang, Jianhua
Ajoudani, Arash
Chen, Shengyong
contents Visual Simultaneous Localization and Mapping (vSLAM) has achieved great progress in the computer vision and robotics communities, and has been successfully used in many fields such as autonomous robot navigation and AR/VR. However, vSLAM cannot achieve good localization in dynamic and complex environments. Numerous publications have reported that, by combining with the semantic information with vSLAM, the semantic vSLAM systems have the capability of solving the above problems in recent years. Nevertheless, there is no comprehensive survey about semantic vSLAM. To fill the gap, this paper first reviews the development of semantic vSLAM, explicitly focusing on its strengths and differences. Secondly, we explore three main issues of semantic vSLAM: the extraction and association of semantic information, the application of semantic information, and the advantages of semantic vSLAM. Then, we collect and analyze the current state-of-the-art SLAM datasets which have been widely used in semantic vSLAM systems. Finally, we discuss future directions that will provide a blueprint for the future development of semantic vSLAM.
format Preprint
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publishDate 2022
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spellingShingle Semantic Visual Simultaneous Localization and Mapping: A Survey
Chen, Kaiqi
Xiao, Junhao
Liu, Jialing
Tong, Qiyi
Zhang, Heng
Liu, Ruyu
Zhang, Jianhua
Ajoudani, Arash
Chen, Shengyong
Computer Vision and Pattern Recognition
Visual Simultaneous Localization and Mapping (vSLAM) has achieved great progress in the computer vision and robotics communities, and has been successfully used in many fields such as autonomous robot navigation and AR/VR. However, vSLAM cannot achieve good localization in dynamic and complex environments. Numerous publications have reported that, by combining with the semantic information with vSLAM, the semantic vSLAM systems have the capability of solving the above problems in recent years. Nevertheless, there is no comprehensive survey about semantic vSLAM. To fill the gap, this paper first reviews the development of semantic vSLAM, explicitly focusing on its strengths and differences. Secondly, we explore three main issues of semantic vSLAM: the extraction and association of semantic information, the application of semantic information, and the advantages of semantic vSLAM. Then, we collect and analyze the current state-of-the-art SLAM datasets which have been widely used in semantic vSLAM systems. Finally, we discuss future directions that will provide a blueprint for the future development of semantic vSLAM.
title Semantic Visual Simultaneous Localization and Mapping: A Survey
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2209.06428