目標(biāo)檢測與光流融合的對象級動態(tài)同步定位與地圖構(gòu)建方法

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中圖分類號:TP391 文獻(xiàn)標(biāo)識碼:A
doi:10.37188/OPE.20253308.1313 CSTR:32169.14.OPE.20253308.1313
Abstract: Most existing visual Simultaneous Localization and Mapping (SLAM) systems assume a static environment. This assumption leads to significant degradation in positioning accuracy in dynamic scenes.
To address this limitation,this paper introduced an object-level dynamic SLAM method. The method integrated object detection with optical flow techniques. Object detection was used to acquire detailed semantic information about objects. Optical flow and object reprojection technologies were employed to distinguish between static and dynamic objects. Feature points associated with dynamic objects were subsequently removed.An optimal matching relationship was established between detected objects and map objects.Static objects were optimized within keyframes to improve localization accuracy. A dynamic quadratic surface optimization strategy was introduced. This strategy optimized dynamic quadratic surface models in the object map.It also enabled the tracking of dynamic object trajectories. Finally,the method reconstructed a dense static background. Experiments were conducted on the Bonn and TUM datasets.The results demonstrate significant improvements in accuracy. Absolute pose accuracy improves by 44.3% .Relative pose accuracy improves by 19.0% . These findings confirm that our method can deliver more precise and robust localization in dynamic scenes. To further validate the system's online performance,real-world dynamic scenarios were tested. The experimental results met the expected performance standards.These tests confirmed the system’s reliability in practical applications.
Key words: dynamic scenes;SLAM;optical flow;quadratic surface;object detection
1引言
相較于激光SLAM,視覺SLAM技術(shù)以其成本低廉、易于集成及功耗較低等優(yōu)勢,在自動駕駛、移動機(jī)器人、增強(qiáng)現(xiàn)實(AR)、虛擬現(xiàn)實(VR)以及無人機(jī)等領(lǐng)域展現(xiàn)了顯著的應(yīng)用潛力。(剩余17699字)