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A real-time semantic visual SLAM approach with points and objects

Peiyu Guan, Zhiqiang Cao, Erkui Chen, Shuang Liang, Min Tan, Junzhi Yu

Year
2020
Citations
24
Access
Open access

Abstract

Visual simultaneously localization and mapping (SLAM) is important for self-localization and environment perception of service robots, where semantic SLAM can provide a more accurate localization result and a map with abundant semantic information. In this article, we propose a real-time PO-SLAM approach with the combination of both point and object measurements. With point–point association in ORB-SLAM2, we also consider point–object association based on object segmentation and object–object association, where the object segmentation is employed by combining object detection with depth histogram. Also, besides the constraint of feature points belonging to an object, a semantic constraint of relative position invariance among objects is introduced. Accordingly, two semantic loss functions with point and object information are designed and added to the bundle adjustment optimization. The effectiveness of the proposed approach is verified by experiments.

Keywords

Computer scienceObject (grammar)Artificial intelligenceComputer visionSimultaneous localization and mappingSegmentationFeature (linguistics)Point (geometry)RobotConstraint (computer-aided design)

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