The Diversity and Scale Matter: Ubiquitous Transportation Mode Detection using Single Cell Tower Information
Ali Mohamed AbdelAziz, Moustafa Youssef

TL;DR
MonoSense is a transportation mode detection system that uses only serving cell tower information, extracting diverse features from signal strength and tower ID to achieve high accuracy without relying on energy-intensive sensors.
Contribution
The paper introduces MonoSense, a novel approach that detects transportation modes using solely cell tower data, overcoming limitations of previous sensor-dependent methods.
Findings
Achieves around 89% precision and recall in mode detection
Uses features from both time and frequency domains
Employs both logarithmic and linear RSS scales for better accuracy
Abstract
Detecting the transportation mode of a user is important for a wide range of applications. While a number of recent systems addressed the transportation mode detection problem using the ubiquitous mobile phones, these studies either leverage GPS, the inertial sensors, and/or multiple cell towers information. However, these different phone sensors have high energy consumption, limited to a small subset of phones (e.g. high-end phones or phones that support neighbouring cell tower information), cannot work in certain areas (e.g. inside tunnels for GPS), and/or work only from the user side. In this paper, we present a transportation mode detection system, MonoSense, that leverages the phone serving cell information only. The basic idea is that the phone speed can be correlated with features extracted from both the serving cell tower ID and the received signal strength from it. To achieve…
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Taxonomy
TopicsHuman Mobility and Location-Based Analysis · Context-Aware Activity Recognition Systems · Urban Transport and Accessibility
