1 / 7

Challenges: Device-free Passive Localization for Wireless E nvironments

Challenges: Device-free Passive Localization for Wireless E nvironments. Moustafa Youssef, Matthew Mah, Ashok Agrawala University of Maryland College Park MobiCom’07. Motivation. Conventional location detection techs Must carry “tracking” objects to localization

urbano
Download Presentation

Challenges: Device-free Passive Localization for Wireless E nvironments

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Challenges:Device-free Passive Localization for Wireless Environments Moustafa Youssef, Matthew Mah, Ashok Agrawala University of Maryland College Park MobiCom’07

  2. Motivation • Conventional location detection techs • Must carry “tracking” objects to localization • Examples) GPS, infrared, ultrasonic, radio frequency • Device-free passive (DfP) localization? • RF signal is affected by changes in the environments • Off-the-shelf technology: e.g., WiFi • Design goals • Detection • Tracking (mobility) • Identification (e.g., type, identify, size, shape, etc)

  3. Feasibility Study Scenario: a person enters a room, makes four movements with 60s pause in between movements, and then exits.

  4. Detection • Moving average based detection • Compare the difference between short-term and long-term behavior • Discretize time and calculate the moving average • Control unit time size to capture short/long-term behavior • Event detected if the relative difference between two averages exceed a threshold • Moving variance based detection • Instead of average, use variance for detection • Find the variance of RRSI samples during the entire measurement period • Event is detected if the sample deviation of a given time slot is beyond “r” times the deviation of a interference-free state

  5. Results • Moving variance to the raw data

  6. Tracking • Need to capture the relationship between signal strength and distance • Difficult due to multi-path, etc.. • Radio map building • Person move around the area w/o carrying device • Measure RSSI values and build a RSSI map • Passive Tracking • Given a map, determine the location of a mobile user • Baysian inference: • Maximize P( dist | measured RSSI ) • Map gives us P( measured RSSI | dist)

  7. Challenges • Identification function (DfP profiling) • Type, identity, mass, shape, etc. • Handling multiple entities • Automatic generation of a passive radio map • Positioning of Access Points and Monitoring Points • Other hardware and wireless techniques • Dynamic changes in the environments • Interferences (microwaves, WiFi, etc) • Privacy • Robustness

More Related