VisioMap: Lightweight 3D Scene Reconstruction towards Natural Indoor Localization

2019 
Most existing proposals for indoor localization are “unnatural”, as they rely on sensing abilities not available to human beings. While such a mismatch causes complications in human-computer interactions and thus potentially reduces the usability and friendliness of a localization service, it is partially entailed by the need for low-cost/effort sensing with resource-limited mobile devices. Fortunately, recent developments in smart glasses (e.g., Google Glasses) signal a trend towards realistic visual sensing and hence make the sensing ability of mobile devices more compatible to that of human users. Leveraging such front-end developments, we propose VisioMap as a natural indoor localization system that intentionally mimics the human skills in visual localization. VisioMap uses very sparse photo samples to reconstruct 3D indoor scenes; this is facilitated by the facts that photos are taken at the eye-level with high stability and regularity, and that the reconstruction is lightweight as it exploits geometric features rather than image pixels. Localization is in turn performed by matching the geometric features extracted on-line to the reconstructed 3D scene, making VisioMap i) natural to users as they can see the matched 3D scene, and ii) dispensed with the need for dense fingerprints/POIs towards accurate localization.
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