Patents by Inventor Christopher Alme

Christopher Alme has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Patent number: 9936346
    Abstract: Architecture that enables the capability to more effectively define and resize geofences to provide improved geofence utility based on rich context and crowd-sourced data. The architecture enables the intelligent placement of geofences based on rich context that includes both user context and ambient context such as the (predicted or implicitly/explicitly defined) user's travel path, mode of transport, the type of the entity to be visited by the user and geofenced, and the user incentive for visiting the entity to be geofenced. The ambient context includes non-user specific information such as external conditions that may limit or thwart user mobility such as traffic and weather conditions. The rich context and crowd-sourced data assist in improving the spatiotemporal accuracy of suggested/constructed geofences thereby creating a “shaped” geofence that is sufficiently defined to approximate the shape of the entity being geofenced with some degree of accuracy.
    Type: Grant
    Filed: November 28, 2013
    Date of Patent: April 3, 2018
    Assignee: Microsoft Technology Licensing, LLC
    Inventors: Emmanouil Koukoumidis, Norm Bryar, Christopher Alme, Namita Parab, Stephen Lawler, Anthony Bice, Vanya Avramova
  • Publication number: 20150199380
    Abstract: Architecture that obtains and utilizes collections of geographically-tagged data to discover optimal vantage points for viewsheds of entities of interest such as physical entities and conceptual entities such as landmarks, sunset, skyline, etc. The disclosed architecture discloses the utilization of at least geo-tagged image data to discover relationships between a combination of concrete entities and/or abstract concepts, and techniques for surfacing such relationships to users. The data can be crowd-sourced geo-tagged image data that are mined from social content and which can be observed or experienced from a certain location/area.
    Type: Application
    Filed: January 16, 2014
    Publication date: July 16, 2015
    Applicant: Microsoft Corporation
    Inventors: Vanya Avramova, Christopher Alme, Emmanouil Koukoumidis, Norm Bryar, Anthony Bice, Arjun Sundararajan, Mohamed H. Ali
  • Publication number: 20150148061
    Abstract: Architecture that enables the capability to more effectively define and resize geofences to provide improved geofence utility based on rich context and crowd-sourced data. The architecture enables the intelligent placement of geofences based on rich context that includes both user context and ambient context such as the (predicted or implicitly/explicitly defined) user's travel path, mode of transport, the type of the entity to be visited by the user and geofenced, and the user incentive for visiting the entity to be geofenced. The ambient context includes non-user specific information such as external conditions that may limit or thwart user mobility such as traffic and weather conditions. The rich context and crowd-sourced data assist in improving the spatiotemporal accuracy of suggested/constructed geofences thereby creating a “shaped” geofence that is sufficiently defined to approximate the shape of the entity being geofenced with some degree of accuracy.
    Type: Application
    Filed: November 28, 2013
    Publication date: May 28, 2015
    Applicant: Microsoft Corporation
    Inventors: Emmanouil Koukoumidis, Norm Bryar, Christopher Alme, Namita Parab, Stephen Lawler, Anthony Bice, Vanya Avramova