Publication | Open Access
Benchmarking Cameras for Open VSLAM Indoors
13
Citations
33
References
2021
Year
Unknown Venue
EngineeringField RoboticsDifferent TypesLocalizationImage AnalysisStereo VisionCalibrationCamera CalibrationCamera NetworkVisual Simultaneous LocalizationInstrumentationOpen Vslam IndoorsMachine VisionTime-of-flight CameraComputer VisionReliable Localization Reliability3D VisionOdometryComputer Stereo VisionEye TrackingExtended RealityMulti-view Geometry
In this paper we benchmark different types of cameras and evaluate their performance in terms of reliable localization reliability and precision in Visual Simultaneous Localization and Mapping (vSLAM). Such benchmarking is merely found for visual odometry, but never for vSLAM. Existing studies usually compare several algorithms for a given camera. The evaluation methodology we propose is applied to the recent OpenVSLAM framework. The latter is versatile enough to natively deal with perspective, fisheye, 360 cameras in a monocular or stereoscopic setup, an in RGB or RGB-D modalities. Results in various sequences containing light variation and scenery modifications in the scene assess quantitatively the maximum localization rate for 360 vision. In the contrary, RGB-D vision shows the lowest localization rate, but highest precision when localization is possible. Stereo-fisheye trades-off with localization rates and precision between 360 vision and RGB-D vision. The dataset with ground truth will be made available in open access to allow evaluating other/future vSLAM algorithms with respect to these camera types.
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