Title: A Positioning System Using Distributed Mobility Pattern Speculation
1A Positioning System Using Distributed Mobility
Pattern Speculation
- Takamichi Ishihara, Nobuhiko Nishio
- Department of Computer Science, Ritsumeikan
University
2Outdoor Location SystemOur Past Approach
- We want to obtain the location
- Outdoors
- With the smallest device possible
- WiFi-Based
- Users have mobile devices with WiFi.
- WiFi-MAP is prepared from which position is
estimated. - Location Estimation Algorithm
- Simple rectangle are used.(Cell-ID)
- Use of signal strength to improve accuracy
- Signal Strength is classified into three
categories weak, normal, and strong - Depending on strength the size of the rectangle
is varied
3Initial Location Estimation Algorithm
Rectangle B
Logged point
Rectangle A
Max Lat
Min Lon
Max Lon
Min Lat
Rectangle C
The smallest rectangle that encloses all logged
points
Presumed range in present location
Estimated location
4Experimental Result in the SuburbsAlgorithm
Performance Comparison
5WOWnet Project
- Aim Community-Based Security System
Industry-Academia-Civilian Collaboration Project - Transmit an SOS from a childs wireless device
- Individual nearby the Base-station receives the
SOS and arrives on the scene
Size of device assumed in the future
6Application
- Table-sized demo of context-aware services for
cities
Smart Advertising - Sending advertisements to
users based on their own movement history
Personal Navigation - Pointing users in the
direction of their destination in real-time
7Applying Mobility Pattern Matching
- In algorithms up to now, location accuracy isnt
high in places where the density of APs is low. - Using Mobility Pattern
- Improve current algorithm precision
- Estimating location where APs are not accessible
- Recognition of irregular movement
8Preliminary Experiment With Mobility Pattern
Matching
- Initially, a mobility pattern was defined as
- The temporal sequence of APs encountered while
walking along a certain route. - i.e. the route between your home and school
- In this preliminary experiment, the mobility
pattern was made in an approx. 300m section of
Ritsumeikan University.
9Experimental Result for Campus PrototypeMobility
Pattern Usage
10Proposed System
- From this experiment, the effectiveness of
mobility pattern usage is confirmed. - But, handheld devices cant hold all mobility
patterns. - Therefore,
- We propose A Positioning System Using
Distributed Mobility Pattern Speculation.
11Now, how is mobility pattern data defined?
- Defined as the smallest unit of a mobility
pattern - A location on the line segment between two
points - Method for selecting end-points
- Eligible points
- Strongest Signal Point Point within a Rectangle
where the signal is strongest - AP Boundary Points Points where the AP is first
and last heard - The path that connects the selected end-points si
one pattern.
12Generation of Mobility Pattern Data
- Mobility pattern data is generated in parallel
with the WiFi-MAP Generation stage (War Driving). - WiFi-MAP is made with an existing method.
- When generating mobility pattern data, the values
returned by GPS along the path between eligible
points are logged (latitude, longitude, time). - Two or more patterns are generated.
13Generation of Mobility Pattern Data
WiFi-MAP
1 mobility pattern
GPS data point
There are 12 eligible points, so 11 patterns are
generated.
Path of movement
Strongest Signal Point
AP Boundary Point
14How is location estimated by using mobility
patterns?
- A handheld device has a WiFi-MAP and a part of
the mobility pattern data. - Location is not estimated by the measurements
momentary signal condition only. - The speed of the device is obtained from the
travel time between the edge points of the
mobility pattern. - Location between the edge points is then
estimated based on the speed and mobility pattern
data.
15Decentralization of mobility pattern data
- How is mobility pattern data grouped for the
purpose of decentralization? - Presently the following criteria are used
- Time( i.e. all points that can be walked to
within 5 min.) - Distance ( i.e. 1km2)
focused set of patterns
16Revision of WiFi-MAP and Mobility Pattern Data
- Mobility pattern data usage is limited to routes
along which WarDriving(WiFi-MAP Generation) was
done. - In practice, both the WiFi-MAP and mobility
pattern data renewal architecture are necessary. - Design of suitable data structure for revision
17Challenge
- Lets assume that there is WiFi-MAP in an area
where there is no mobility pattern data. - Locky.jp etc.
- Using that WiFi-MAP it may be possible to
generate imaginary mobility pattern data.
Area without neither WiFi-MAP nor mobility
pattern
18Current Research Plan
- Implement a prototype of the newly defined
movement pattern usage. - Initially leaving out the considerations for map
revision. - Verify the effectiveness of the new proposal.
- Is the eligible point selection method
appropriate? - Mobility pattern location estimation algorithm
- etc