real-time and accurate indoor localization with fusion model of wi-fi fingerprint and motion particle filter

real-time and accurate indoor localization with fusion model of wi-fi fingerprint and motion particle filter

;Xinlong Jiang;Yiqiang Chen;Junfa Liu;Dingjun Liu;Yang Gu;Zhenyu Chen
journal of power sources 2015 Vol. 2015 pp. -
214
jiang2015mathematicalreal-time

Abstract

As the development of Indoor Location Based Service (Indoor LBS), a timely localization and smooth tracking with high accuracy are desperately needed. Unfortunately, any single method cannot meet the requirement of both high accuracy and real-time ability at the same time. In this paper, we propose a fusion location framework with Particle Filter using Wi-Fi signals and motion sensors. In this framework, we use Extreme Learning Machine (ELM) regression algorithm to predict position based on motion sensors and use Wi-Fi fingerprint location result to solve the error accumulation of motion sensors based location occasionally with Particle Filter. The experiments show that the trajectory is smoother as the real one than the traditional Wi-Fi fingerprint method.

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ID: 134187
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0x95644003c57E6F55A65596E3D9Eac6813e3566dA
Article ID:
134187
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10.1155/2015/545792
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Scimatic Chain (ID: 481)
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