Litcius/Paper detail

We Hear Your PACE

Chao Cai, Henglin Pu, Peng Wang, Zhe Chen, Jun Luo

2021Proceedings of the ACM on Interactive Mobile Wearable and Ubiquitous Technologies56 citationsDOI

Abstract

Indoor localization is crucial to enable context-aware applications, but existing solutions mostly require a user to carry a device, so as to actively sense location-discriminating signals. However, many applications do not prefer user involvement due to, e.g., the cumbersome of carrying a device. Therefore, solutions that track user locations passively can be desirable, yet lack of active user involvement has made passive indoor localization very challenging even for a single person. To this end, we propose Passive Acoustic loCalization of multiple walking pErsons (PACE) as a solution for small-scale indoor scenarios: it passively locates users by pinpointing the positions of their footsteps. In particular, PACE leverages both structure-borne and air-borne footstep impact sounds (FIS); it uses structure-borne FIS for range estimations exploiting their acoustic dispersion nature, and it employs air-borne FIS for Angle-of-Arrival (AoA) estimations and person identifications. To combat the low-SNR nature of FIS, PACE innovatively employs domain adversarial adaptation and spectral weighting to ranging/identification and AoA estimations, respectively. We implement a PACE prototype and extensively evaluate its performance in representative environments. The results demonstrate a promising sub-meter localization accuracy with a median error of 30 cm.

Topics & Concepts

PaceComputer scienceWeightingIdentification (biology)Adaptation (eye)Context (archaeology)Angle of arrivalRangingRange (aeronautics)Real-time computingArtificial intelligenceHuman–computer interactionAcousticsTelecommunicationsEngineeringGeographyBotanyAerospace engineeringGeodesyPhysicsArchaeologyAntenna (radio)OpticsBiologyIndoor and Outdoor Localization TechnologiesSpeech and Audio ProcessingGait Recognition and Analysis