Abstract

Indoor localization and navigation have a great potential of application, especially in large indoor spaces where people tend to get lost. The indoor localization problem is the fundamental of an indoor navigation system. Existing research and commercial efforts have leveraged wireless-based approaches to locate users in indoor environments. However, the predominant wireless-based approaches, such as WiFi and Bluetooth, are still not satisfactory, either not supporting commodity devices, or being vulnerable to environmental changes. These issues make them hard to deploy and maintain. In this paper, we present Vivid, a mobile device-friendly indoor localization and navigation system that leverages visual cues as the cornerstone of localization. By leveraging the computation power at the extreme internet edges, Vivid to a large extent overcomes the difficulties brought by resource-intensive image processing tasks. We propose a grid-based algorithm that transforms the feature map into a grid, with which finding the path between two positions can be easily obtained. We also leverage deep learning techniques to assist in automatic map maintenance to adapt to the visual changes and make the system more robust. With edge computing, user privacy is preserved since the visual data is mainly processed locally and detected dynamic objects are removed immediately without saving to databases. The evaluation results show that: i) our system easily outperforms the existing solutions on COTS devices in localization accuracy, yielding decimeter-level error; ii) our choice of the system architecture is scalable and optimal among the available ones; iii) the automatic map maintenance mechanism effectively ameliorates the localization robustness of the system.

Highlights

  • Indoor localization and navigation have been an active research area in both academia and industry

  • SLAM has its own redundant keyframe removal algorithms, besides that, we developed the abovementioned rules to further filter out frames that have similar features

  • EVALUATION To evaluate, we implement our system with an off-the-shelf pull request of ORB-SLAM2 [10] that supports map save and load [11] by leveraging the Boost Serialization library [12]

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Summary

Introduction

Indoor localization and navigation have been an active research area in both academia and industry. Traditional methods, such as maps and instruction signs, are often not convenient enough. The map of a shopping mall might clearly indicate the location of a shop in the floor plan, but the instruction signs seldom show the specific way to it. COIN-GPS [1] addresses the poor signal strength problem of indoor GPS receivers and could achieve an error of less than 10 meters.

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