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VOLDOR<sup>+</sup>SLAM: For the times when feature-based or direct methods are not good enough

Zhixiang Min, Enrique Dunn

202118 citationsDOI

Abstract

We present a dense-indirect SLAM system using external dense optical flows as input. We extend the recent probabilistic visual odometry model VOLDOR [1], by incorporating the use of geometric priors to 1) robustly bootstrap estimation from monocular capture, while 2) seamlessly supporting stereo and/or RGB-D input imagery. Our customized back-end tightly couples our intermediate geometric estimates with an adaptive priority scheme managing the connectivity of an incremental pose graph. We leverage recent advances in dense optical flow methods to achieve accurate and robust camera pose estimates, while constructing fine-grain globally-consistent dense environmental maps. Our open source implementation [https://github.com/htkseason/VOLDOR] operates online at around 15 FPS on a single GTX1080Ti GPU.

Topics & Concepts

Artificial intelligenceComputer scienceLeverage (statistics)Computer visionOptical flowMonocularSimultaneous localization and mappingVisual odometryFeature (linguistics)Probabilistic logicPoseBundle adjustmentRGB color modelImage (mathematics)RobotMobile robotPhilosophyLinguisticsRobotics and Sensor-Based LocalizationAdvanced Vision and ImagingRobotic Path Planning Algorithms
VOLDOR<sup>+</sup>SLAM: For the times when feature-based or direct methods are not good enough | Litcius