accuracy characterization for metropolitan-scale wi-fi localization

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Accuracy Characterization for Accuracy Characterization for Metropolitan-scale Wi-Fi Metropolitan-scale Wi-Fi Localization Localization Yu-Chung Cheng (UCSD, Intel Yu-Chung Cheng (UCSD, Intel Research) Research) Yatin Chawathe (Intel Research) Yatin Chawathe (Intel Research) Anthony LaMarca (Intel Research) Anthony LaMarca (Intel Research) John Krumm (Microsoft Research) John Krumm (Microsoft Research)

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Accuracy Characterization for Metropolitan-scale Wi-Fi Localization. Yu-Chung Cheng (UCSD, Intel Research) Yatin Chawathe (Intel Research) Anthony LaMarca (Intel Research) John Krumm (Microsoft Research). Introduction. Context-aware applications are prevalent M aps - PowerPoint PPT Presentation

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Page 1: Accuracy Characterization for Metropolitan-scale Wi-Fi Localization

Accuracy Characterization for Accuracy Characterization for Metropolitan-scale Wi-Fi LocalizationMetropolitan-scale Wi-Fi Localization

Yu-Chung Cheng (UCSD, Intel Yu-Chung Cheng (UCSD, Intel Research)Research)Yatin Chawathe (Intel Research)Yatin Chawathe (Intel Research)

Anthony LaMarca (Intel Research)Anthony LaMarca (Intel Research)

John Krumm (Microsoft Research)John Krumm (Microsoft Research)

Page 2: Accuracy Characterization for Metropolitan-scale Wi-Fi Localization

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IntroductionIntroduction

Context-aware applications are prevalent– Maps– Location-enhanced content– Social applications– Emergency services (E911)

A key enabler: location systems– Must have high coverage

Work wherever we take the devices

– Low calibration overhead Scale with the coverage

– Low cost Commodity devices

Page 3: Accuracy Characterization for Metropolitan-scale Wi-Fi Localization

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Riding the Wi-Fi waveRiding the Wi-Fi wave

Wi-Fi is everywhere now– No new infrastructure– Low cost– APs broadcast beacons– “War drivers” already build AP

maps Calibrated using GPS Constantly updated

Position using Wi-Fi– Indoor Wi-Fi positioning gives 2-

3m accuracy– But requires high calibration

overhead: 10+ hours per building What if we use war-driving

maps for positioning? Manhattan (Courtesy of Wigle.net)

Page 4: Accuracy Characterization for Metropolitan-scale Wi-Fi Localization

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Why not just use GPS?Why not just use GPS?

High coverage and accuracy (<10m)

But, does not work indoors or in urban canyons

GPS devices are not nearly as prevalent as Wi-Fi

Page 5: Accuracy Characterization for Metropolitan-scale Wi-Fi Localization

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MethodologyMethodology

Training phase– Collect AP beacons by “war

driving” with Wi-Fi card + GPS– Each scan records

A GPS coordinate List of Access Points

– Covers one neighborhood in 1 hr (~1 km2)

– Build radio map from AP traces

Positioning phase– Use radio map to position the user– Compare the estimated position w/

GPS

Page 6: Accuracy Characterization for Metropolitan-scale Wi-Fi Localization

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Downtown vs. Urban Residential vs. Downtown vs. Urban Residential vs. SuburbanSuburban

Downtown(Seattle)

Urban Residential(Ravenna)

Suburban(Kirkland)

Page 7: Accuracy Characterization for Metropolitan-scale Wi-Fi Localization

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EvaluationEvaluation

Choice of algorithms– Naïve, Fingerprint, Particle Filter

Environmental Factors– AP density: do more APs help?

– #APs/scan?

– AP churn: does AP turnover hurt?

– GPS noise: what if GPS is inaccurate?

Datasets– Scanning rate?

Page 8: Accuracy Characterization for Metropolitan-scale Wi-Fi Localization

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Compare Accuracy of Different AlgorithmsCompare Accuracy of Different Algorithms

Centroid– Estimate position as arithmetic mean of positions of all heard APs

Fingerprinting– User hears APs with some signal strength signature

– Match closest 3 signatures in the radio map

– RADAR: compare using absolute signal strengths [Bahl00]

– RANK: compare using relative ranking of signal strengths [Krumm03]

Particle Filters– Probabilistic approximation algorithm for Bayes filter

Page 9: Accuracy Characterization for Metropolitan-scale Wi-Fi Localization

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Baseline ResultsBaseline Results

0

10

20

30

40

50

60

70

Downtown UrbanResidential

Suburban

Me

dia

n E

rro

r (m

ete

rs) Centroid (Basic)

Fingerprint (Radar)

Fingerprint (Rank)

Particle Filter

• Algorithms matter less (except rank)• AP density (horizontal/vertical) matters

Page 10: Accuracy Characterization for Metropolitan-scale Wi-Fi Localization

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Effect of APs per scanEffect of APs per scan

• More APs/scan lower median error• Rank does not work with 1 AP/scan

Page 11: Accuracy Characterization for Metropolitan-scale Wi-Fi Localization

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Effects of AP TurnoversEffects of AP Turnovers

0

20

40

60

80

100

0% 20% 40% 60% 80% 100%AP Turnovers

Med

ian

erro

r (m

eter

s)

centroid

particle filter

radar

rank

• Minimal effect on accuracy even with 60% AP turnover

Page 12: Accuracy Characterization for Metropolitan-scale Wi-Fi Localization

slide12

Effects of GPS noiseEffects of GPS noise

• Particle filter & Centroid are insensitive to GPS noise

Page 13: Accuracy Characterization for Metropolitan-scale Wi-Fi Localization

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Scanning densityScanning density

• 1 scan per 10 meters is good == 25 mph driving speed at 1 scan/sec• More war-drives do not help

Page 14: Accuracy Characterization for Metropolitan-scale Wi-Fi Localization

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SummarySummary

Wi-Fi-based location with low calibration overhead– 1 city neighborhood in 1 hour

Positioning accuracy depends mostly on AP density– Urban 13~20m, Suburban ~40m– Dense ap records get better acuracy– In urban area, simple (Centroid) algo. yields same accuracy as

other complex ones

AP turnovers & low training data density do not degrade accuracy significantly

– Low calibration overhead

Noise in GPS only affects fingerprint algorithms

Page 15: Accuracy Characterization for Metropolitan-scale Wi-Fi Localization

slide15

Q & AQ & A

http://placelab.org