SCALING: plug-n-play device-free indoor tracking

Author:

Xie ZongxingORCID,Ye Fan

Abstract

Abstract24/7 continuous recording of in-home daily trajectories is informative for health status assessment (e.g., monitoring Alzheimer’s, dementia based on behavior patterns). Indoor device-free localization/tracking are ideal because no user efforts on wearing devices are needed. However, prior work mainly focused on improving the localization accuracy. They relied on well-calibrated sensor placements, which require hours of intensive manual setup and respective expertise, feasible only at small scale and by mostly researchers themselves. Scaling the deployments to tens or hundreds of real homes, however, would incur prohibitive manual efforts, and become infeasible for layman users. We present SCALING, a plug-and-play indoor trajectory monitoring system that layman users can easily set up by walking a one-minute loop trajectory after placing radar nodes on walls. It uses a self calibrating algorithm that estimates sensor locations through their distance measurements to the person walking the trajectory, a trivial effort without taxing layman users physically or cognitively. We evaluate SCALING via simulations and two testbeds (in lab and home configurations of sizes 3$$\times$$ × 6 sq m and 4.5$$\times$$ × 8.5 sq m). Experimental results demonstrate that SCALING outperformed the baseline using the approximate multidimensional scaling (MDS, the most relevant method in the context of self calibration) by 3.5 m/1.6 m in 80-percentile error of self calibration and tracking, respectively. Notably, only 1% degradation in performance has been observed with SCALING compared to the classical multilateration with known sensor locations (anchors), which costs hours of intensive calibrating effort. In addition, we conduct Monte Carlo experiments to numerically analyze the impact of sensor placements and develop practical guidelines for deployment in real life scenarios.

Funder

NSF grants

Publisher

Springer Science and Business Media LLC

Reference64 articles.

1. Pan, S. et al. Footprintid: Indoor pedestrian identification through ambient structural vibration sensing. Proc. ACM IMWUT 1, 1–31 (2017).

2. Mirshekari, M. et al. Occupant localization using footstep-induced structural vibration. Mech. Syst. Signal Process. 112, 77–97 (2018).

3. Guan, K., Ma, L., Tan, X. & Guo, S. Vision-based indoor localization approach based on surf and landmark. IWCMC 2016, 655–659 (2016).

4. Garg, N., Bai, Y. & Roy, N. Owlet: Enabling spatial information in ubiquitous acoustic devices. MobiSys 21, 255–268 (2021).

5. Alam, F., Faulkner, N. & Parr, B. Device-free localization: A review of non-rf techniques for unobtrusive indoor positioning. IEEE Internet Things J. 8, 4228–4249 (2020).

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