SONY

An Inductive System Monitoring Approach for GNSS Activation

Date
2022
Academic Conference
AIAI 2022 - 18th International Conference on Artificial Intelligence Applications and Innovations
Authors
Shahrooz Abghari (Blekinge Institute of Technology)
Veselka Boeva (Blekinge Institute of Technology)
Emiliano Casalicchio (Blekinge Institute of Technology)
Peter Exner (Sony Europe, B.V.)
Research Areas
AI & Machine Learning

Abstract

In this paper, we propose a Global Navigation Satellite System (GNSS) component activation model for mobile tracking devices that automatically detects indoor/outdoor environments using the radio signals received from Long-Term Evolution (LTE) base stations. We use an Inductive System Monitoring (ISM) technique to model environmental scenarios captured by a smart tracker via extracting clusters of corresponding value ranges from LTE base stations’ signal strength. The ISM-based model is built by using the tracker’s historical data labeled with GPS coordinates. The built model is further refined by applying it to additional data without GPS location collected by the same device. This procedure allows us to identify the clusters that describe semi-outdoor scenarios. In that way, the model discriminates between two outdoor environmental categories: open outdoor and semi-outdoor. The proposed ISM-based GNSS activation approach is studied and evaluated on a realworld dataset contains radio signal measurements collected by five smart trackers and their geographical location in various environmental scenarios.

このページの先頭へ