Systems, Apparatuses, And Methods For Enhanicing Indoor Maps With Room Type Information


Ontology type: sgo:Patent     


Patent Info

DATE

2018-03-22T00:00

AUTHORS

ZU, KEKE , ZHANG, GUOQIANG , FU, JING , FU, Zhang

ABSTRACT

Determining a room type for a room based on location information for the room. In one embodiment, this comprises obtaining location information for a structure comprising a plurality of rooms, including a first room and a second room, wherein the location information comprises a first set of location data points, wherein each location data point included in the first set of location data points identifies i) a location within the first room and ii) a time at which a mobile communication device was determined to be at the identified location within the first room; using the first set of location data points to generate a feature vector for the first room, wherein the feature vector comprises a set of feature values derived using the first set of location data points; determining a room type for the first room based on the generated feature vector. More... »

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