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An Improved High Precision 3D Semantic Mapping of Indoor Scenes from RGB-D Images
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作者 Jing Xin Kenan Du +1 位作者 Jiale Feng Mao Shan 《Computer Modeling in Engineering & Sciences》 SCIE EI 2023年第12期2621-2640,共20页
This paper proposes an improved high-precision 3D semantic mapping method for indoor scenes using RGB-D images.The current semantic mapping algorithms suffer from low semantic annotation accuracy and insufficient real... This paper proposes an improved high-precision 3D semantic mapping method for indoor scenes using RGB-D images.The current semantic mapping algorithms suffer from low semantic annotation accuracy and insufficient real-time performance.To address these issues,we first adopt the Elastic Fusion algorithm to select key frames from indoor environment image sequences captured by the Kinect sensor and construct the indoor environment space model.Then,an indoor RGB-D image semantic segmentation network is proposed,which uses multi-scale feature fusion to quickly and accurately obtain object labeling information at the pixel level of the spatial point cloud model.Finally,Bayesian updating is used to conduct incremental semantic label fusion on the established spatial point cloud model.We also employ dense conditional random fields(CRF)to optimize the 3D semantic map model,resulting in a high-precision spatial semantic map of indoor scenes.Experimental results show that the proposed semantic mapping system can process image sequences collected by RGB-D sensors in real-time and output accurate semantic segmentation results of indoor scene images and the current local spatial semantic map.Finally,it constructs a globally consistent high-precision indoor scenes 3D semantic map. 展开更多
关键词 3d semantic map online reconstruction RGB-D images semantic segmentation indoor mobile robot
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Next Generation Semantic and Spatial Joint Perception——Neural Metric-Semantic Understanding
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作者 ZHU Fang 《ZTE Communications》 2021年第1期61-71,共11页
Efficient perception of the real world is a long-standing effort of computer vision.Mod⁃ern visual computing techniques have succeeded in attaching semantic labels to thousands of daily objects and reconstructing dens... Efficient perception of the real world is a long-standing effort of computer vision.Mod⁃ern visual computing techniques have succeeded in attaching semantic labels to thousands of daily objects and reconstructing dense depth maps of complex scenes.However,simultaneous se⁃mantic and spatial joint perception,so-called dense 3D semantic mapping,estimating the 3D ge⁃ometry of a scene and attaching semantic labels to the geometry,remains a challenging problem that,if solved,would make structured vision understanding and editing more widely accessible.Concurrently,progress in computer vision and machine learning has motivated us to pursue the capability of understanding and digitally reconstructing the surrounding world.Neural metric-se⁃mantic understanding is a new and rapidly emerging field that combines differentiable machine learning techniques with physical knowledge from computer vision,e.g.,the integration of visualinertial simultaneous localization and mapping(SLAM),mesh reconstruction,and semantic un⁃derstanding.In this paper,we attempt to summarize the recent trends and applications of neural metric-semantic understanding.Starting with an overview of the underlying computer vision and machine learning concepts,we discuss critical aspects of such perception approaches.Specifical⁃ly,our emphasis is on fully leveraging the joint semantic and 3D information.Later on,many im⁃portant applications of the perception capability such as novel view synthesis and semantic aug⁃mented reality(AR)contents manipulation are also presented.Finally,we conclude with a dis⁃cussion of the technical implications of the technology under a 5G edge computing scenario. 展开更多
关键词 visual computing semantic and spatial joint perception dense 3d semantic map⁃ping neural metric-semantic understanding
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以道路高精地图建设为例的部件级实景三维探索 被引量:4
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作者 曾诗晴 陈凯 +3 位作者 陈文典 张勇 曾浩炜 吴亮 《测绘通报》 北大核心 2025年第2期23-27,共5页
随着“实景三维中国”建设目标的深入推进,部件级实景三维产品需求日益增长。本文从顶层设计出发,研究了以道路高精地图为典型代表的部件级实景三维产品全流程建设思路和快速构建方法,阐述了道路高精地图产品的实体化、语义化、三维化... 随着“实景三维中国”建设目标的深入推进,部件级实景三维产品需求日益增长。本文从顶层设计出发,研究了以道路高精地图为典型代表的部件级实景三维产品全流程建设思路和快速构建方法,阐述了道路高精地图产品的实体化、语义化、三维化特征的关键技术,构建具有“一码多态”特征的道路部件级实景三维产品,并以成都高新南区5 km道路路段作为研究区,验证了该技术架构的可行性。研究结果表明,最终的道路高精地图部件产品精度、完整性、一致性等符合规范和设计要求,一定程度上提升了生产效率,也为其他城市部件级实景三维发展建设提供了参考依据。 展开更多
关键词 部件级实景三维 道路高精地图 实体化 一码多态
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