CANOE: Opportunistic calibration assisted micro navigation in dense open environments

Parikshit Sharma, D. Chakraborty, S. Mittal
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Abstract

Crowded musical concerts (and open densely crowded environments in general) pose significant hurdles to people trying to navigate to their family and friends. Calls get frequently dropped due to crowd spikes and loud noise makes cellular voice communication cumbersome. Low visibility in such dense environments render traditional navigation solutions ineffective. Global Positioning System (GPS) and Pedestrian Dead Reckoning (PDR) based systems are known to be error prone and inefficient for such micro-navigation scenarios. Incorrect and delayed position fixes result in high convergence time and frequent oscillating about the route to the destination, leading to a frustrating user experience, specially in dense crowd. To address the dual issue of convergence and user experience we propose CANOE - a novel tunnel based navigation methodology which allows users the flexibility of using their own sense to wade through crowd, while concurrently using best effort opportunistic position fixes to constrain drifts. It also reduces the dependency of constantly looking at the phone for position updates and route information. Extensive simulation results show that our algorithm can achieve 2-4x improvement in convergence time and reduced oscillations under different crowd scenarios as compared to state-of-the-art approaches. We also conduct live experiments with a crowd of 22 people and 15 smartphones and find that CANOE can contain location drifts within 1-2m in signal degraded environments where PDR location drifts range around 6-7m for short walks of 25m.
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独木舟:机会校准辅助微导航在密集的开放环境
拥挤的音乐会(以及一般的开放式拥挤环境)对试图与家人和朋友联系的人构成了重大障碍。由于拥挤的高峰和巨大的噪音,电话经常中断,使蜂窝语音通信变得麻烦。在如此密集的环境中,低能见度使得传统的导航解决方案无效。众所周知,基于全球定位系统(GPS)和行人航位推算(PDR)的系统在这种微型导航场景中容易出错且效率低下。不正确和延迟的位置固定导致高收敛时间和频繁振荡的路线到目的地,导致令人沮丧的用户体验,特别是在密集的人群。为了解决融合和用户体验的双重问题,我们提出了CANOE——一种新颖的基于隧道的导航方法,允许用户灵活地使用自己的感觉在人群中穿行,同时使用最佳努力机会定位来限制漂移。它还减少了对不断查看手机位置更新和路线信息的依赖。大量的仿真结果表明,与最先进的方法相比,我们的算法在不同人群场景下的收敛时间和减少振荡方面可以实现2-4倍的改进。我们还对22个人和15部智能手机进行了现场实验,发现在信号退化的环境中,PDR位置漂移范围在6-7米左右,行走距离为25米,CANOE可以包含1-2米的位置漂移。
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