Indoor Localization Using a Modern Smartphone Carick Wienke Advisor: Dr. Nicholas Kirsch Although indoor localization is an important tool for a wide range.

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Indoor Localization Using a Modern Smartphone Carick Wienke Advisor: Dr. Nicholas Kirsch Although indoor localization is an important tool for a wide range of applications, such as helping firefighters navigate through a burning building, or a business man trying to find a room in a complex building, current localization systems are not able to provide precise positioning information. The most common system, Global Positioning System (GPS), is inaccurate indoors due to the delays caused by signals propagating the structure. Problem Description Implemented Solution The received signal strength (RSS) of wireless signals is a function of the distance between the transmitter and receiver, location can be approximated if the location of transmitters and RSS are known for multiple signals using trilateration. Wireless LAN (WLAN) signals were chosen due to the predominance of WLAN access points in buildings. WLAN signals strength is far greater than those of satellites, however the location information gathered from WLAN signals suffers from the same problems as GPS signals: the noise caused by the infrastructure. To improve the position estimation, the result of trilateration will be complemented with knowledge about previous location, direction of movement, and the floorplan of the building. Modern smartphones and handheld computers, such as the Dell Streak, have sensors and an interface that can be used to calculate additional metrics to increase the accuracy of the trilateration. The benefits of this method include: Handheld devices that contain the required sensors are becoming more common Uses the existing infrastructure, reducing cost Minimal information about the building is required Measurements Algorithm Stage 2 The total movement between the two scans is accumulated and the previous guess, faint purple, is shifted by the total movement between the two scans to create the purple circle. At this point we expect to be inside both the shifted previous guess and the current guess. Stage 1 The device scans for WLAN signals within range. When the scan is complete, it calculates the approximate radius from each access point, shown in red above. Using the Least Squares method described above, the best guess and radius of area of interest are determined, shown in teal. While the device is scanning, it is continually updates direction of movement. Stage 3 A new guess is calculated by determining the circle that is centered equidistant from both circles and contains the whole intersection of the two circles, the shaded blue circle. The circle calculated in this stage is the circle that is shifted in the second stage of the next iteration. Stage 4 The circle from the previous stage can be narrowed down further using the direction of motion again. Indoors, it is typical for people to walk in a similar pattern, e.g. along the hall. Using this, the position of the user can be snapped to a location where the direction of motion most closely follows predicted movement patterns. The darker areas are more likely to contain the actual location of the user. Figure 2 Sample accelerometer data while walking. D EPARTMENT OF E LECTRICAL AND C OMPUTER E NGINEERING Improvements Allowing a user to calibrate position: If the user could take a picture of a room number sign, the application could precisely locate the user and use this to help determine future locations. Localization inside of rooms: Because movements inside of rooms is more difficult to predict, it was not implemented and the application will try to snap to a location in a hallway. If the application knew about the entrances and exits of a room, once the user uses an entrance the application could keep the user in the room until he uses an exit. Smooth updating of location: The current implementation updates the location only when the scan completes and the location of the user will jump. The location could be updated as the user moves and uses filtering of the new locations so that they jump less. Path finding, augmented reality: Once the localization has been improved, the program could route a user to a different location. This could be complemented by allowing the camera to be used as a heads- up display with the path overlaid on image. Sensor Systems Results the amount of intersection of the consecutive guesses. This will give a location that is accurate to 7 meters or more, but never larger than either of the two approximations. When the direction of movement is compared to the floor plan, the area of interest is not reduced, but the best guess is updated to be in the area where the direction of movement matches predicted movement patterns. This can produce a wrong best guess when the user is close to an intersection and is not moving along the hallway. When using only WLAN information, the device is generally accurate to approximately 7 to 15 meters. There are exceptions, usually when the user is located towards the edges of the map where there are fewer access points. When direction of movement is added, the radius can be reduced depending on