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TwistSLAM++: Fusing Multiple Modalities for Accurate Dynamic Semantic SLAM

Mathieu Gonzalez, Éric Marchand, Amine Kacete, Jérôme Royan

202314 citationsDOIOpen Access PDF

Abstract

Most classical SLAM systems rely on the static scene assumption, which limits their applicability in real world scenarios. Recent SLAM frameworks have been proposed to simultaneously track the camera and moving objects. However they are often unable to estimate the canonical pose of the objects and exhibit a low object tracking accuracy. To solve this problem we propose TwistSLAM++, a semantic, dynamic, SLAM system that fuses stereo images and LiDAR information. Using semantic information, we track potentially moving objects and associate them to 3D object detections in LiDAR scans to obtain their pose and size. Then, we perform registration on consecutive object scans to refine object pose estimation. Finally, object scans are used to estimate the shape of the object and constrain map points to lie on the estimated surface within the bundle adjustment. We show on classical benchmarks that this fusion approach based on multimodal information improves the accuracy of object tracking.

Topics & Concepts

Computer visionArtificial intelligenceComputer scienceSimultaneous localization and mappingBundle adjustmentObject (grammar)PoseTracking (education)Video trackingObject detectionLidarTrajectory3D pose estimationRobotPattern recognition (psychology)Mobile robotImage (mathematics)GeographyRemote sensingPhysicsPedagogyAstronomyPsychologyRobotics and Sensor-Based Localization3D Surveying and Cultural HeritageRobotic Path Planning Algorithms
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