Publication | Closed Access
Vision-Based Positioning for Internet-of-Vehicles
40
Citations
26
References
2016
Year
Automotive TrackingEgo-positioning AlgorithmEngineeringLocation EstimationLocalizationModel Update AlgorithmImage AnalysisPattern RecognitionCamera NetworkSystems EngineeringPositioningComputational GeometryCartographyMachine VisionVehicle LocalizationComputer ScienceStructure From MotionLow-cost Monocular CameraComputer VisionOdometryNatural SciencesEye TrackingMulti-view Geometry
This paper presents an algorithm for ego-positioning by using a low-cost monocular camera for systems based on the Internet-of-Vehicles. To reduce the computational and memory requirements, as well as the communication load, we tackle the model compression task as a weighted k-cover problem for better preserving the critical structures. For real-world vision-based positioning applications, we consider the issue of large scene changes and introduce a model update algorithm to address this problem. A large positioning data set containing data collected for more than a month, 106 sessions, and 14275 images is constructed. Extensive experimental results show that submeter accuracy can be achieved by the proposed ego-positioning algorithm, which outperforms existing vision-based approaches.
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