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Pervasive Radar Social Collaborative Augmented Reality Tool Presented By: Muthanna Abdulhussein

Pervasive Radar Social Collaborative Augmented Reality Tool Presented By: Muthanna Abdulhussein M7012 Pervasive Computing Final Project Presentation. The power of Mobile Augmented Reality: Buzz That takes off …. Outline Project Description Project Architecture Methodology Demo

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Pervasive Radar Social Collaborative Augmented Reality Tool Presented By: Muthanna Abdulhussein

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  1. Pervasive Radar Social Collaborative Augmented Reality Tool Presented By: Muthanna Abdulhussein M7012 Pervasive Computing Final Project Presentation

  2. The power of Mobile Augmented Reality: Buzz That takes off …

  3. Outline • Project Description • Project Architecture • Methodology • Demo • Problems&Solutions • Learned Lessons • Future Research

  4. Project Description • Augmented reality view of social network objects. • Augmented reality view of Points of interests. • Mixing computer data with real world. • Linking Media API to social network objects.

  5. Project Architecture Geo-Coded Data

  6. Methodology • Android Platform. • Distance of each detected object is calculated using great circle distance theory. • 3X3 matrix for latitude and longitude of all objects using GPS sensor. • The marked objects are squeezed to certain width and height. • JSON or XML URL transformable Data.

  7. Methodology • Special filtration process to select the objects within specified radius and up to 80 Km.

  8. Methodology • The mix with social networks: • - Twitter and Google Buzz as social networks. • Twitter Search API deployment. • Geo-coded Tweets URL transformable.

  9. Methodology • Showing nearest Point of interests. • - Subway stations

  10. Methodology • MapView of the detected objects • - Google Maps API • - Array List Of itemized Relay objects • - Open Street Maps Library to show on map.

  11. Demo

  12. Problems&Solutions • Augmented reality mode is not showing any object. • User has to check the interested Data Sources each time the application is launched. • - see weather the application is launched for the first time or not. • - Check point Piece of code is added to differentiate between two cases.

  13. Learned Lessons • Effect of mixing social networks with augmented reality. • Implementing augmented reality tool using smart phones sensors information.

  14. Future Research • Including other social networks like facebook and Linked in. • Embedding the Augmented reality view of pervasive with other more media sharing and location awareness services.

  15. Thank You! Muthanna Abdulhussein LTU mutabd-0@student.ltu.se

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