Zee: zero-effort crowdsourcing for indoor localization

Anshul Rai, Krishna Chintalapudi, V. Padmanabhan, Rijurekha Sen
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引用次数: 1157

Abstract

Radio Frequency (RF) fingerprinting, based onWiFi or cellular signals, has been a popular approach to indoor localization. However, its adoption in the real world has been stymied by the need for sitespecific calibration, i.e., the creation of a training data set comprising WiFi measurements at known locations in the space of interest. While efforts have been made to reduce this calibration effort using modeling, the need for measurements from known locations still remains a bottleneck. In this paper, we present Zee -- a system that makes the calibration zero-effort, by enabling training data to be crowdsourced without any explicit effort on the part of users. Zee leverages the inertial sensors (e.g., accelerometer, compass, gyroscope) present in the mobile devices such as smartphones carried by users, to track them as they traverse an indoor environment, while simultaneously performing WiFi scans. Zee is designed to run in the background on a device without requiring any explicit user participation. The only site-specific input that Zee depends on is a map showing the pathways (e.g., hallways) and barriers (e.g., walls). A significant challenge that Zee surmounts is to track users without any a priori, user-specific knowledge such as the user's initial location, stride-length, or phone placement. Zee employs a suite of novel techniques to infer location over time: (a) placement-independent step counting and orientation estimation, (b) augmented particle filtering to simultaneously estimate location and user-specific walk characteristics such as the stride length,(c) back propagation to go back and improve the accuracy of ocalization in the past, and (d) WiFi-based particle initialization to enable faster convergence. We present an evaluation of Zee in a large office building.
Zee:零努力的室内定位众包
基于wifi或蜂窝信号的射频(RF)指纹识别已经成为室内定位的一种流行方法。然而,它在现实世界中的应用一直受到特定地点校准需求的阻碍,即在感兴趣的空间中已知位置创建包含WiFi测量的训练数据集。虽然已经努力通过建模来减少这种校准工作,但对已知位置测量的需求仍然是一个瓶颈。在本文中,我们介绍了Zee——一个使校准零努力的系统,通过使训练数据能够众包,而无需用户的任何明确努力。Zee利用用户携带的移动设备(如智能手机)中的惯性传感器(如加速度计、指南针、陀螺仪),在用户穿越室内环境时进行跟踪,同时进行WiFi扫描。Zee被设计为在设备的后台运行,不需要任何明确的用户参与。Zee所依赖的唯一特定于地点的输入是一张显示路径(如走廊)和障碍(如墙壁)的地图。Zee克服的一个重大挑战是在没有任何先验的、用户特定的知识(如用户的初始位置、步长或手机位置)的情况下跟踪用户。Zee采用了一套新颖的技术来推断位置随时间的变化:(a)与位置无关的步数计数和方向估计,(b)增强粒子滤波,同时估计位置和用户特定的行走特征,如步长,(c)反向传播,以返回并提高过去定位的准确性,以及(d)基于wifi的粒子初始化,以实现更快的收敛。我们在一个大型办公大楼中对Zee进行了评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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