Abstract

Airborne infectious diseases such as COVID-19 spread when healthy people are in close proximity to infected people. Technology-assisted methods to detect proximity in order to alert people are needed. In this work we systematically investigating Machine Learning (ML) methods to detect proximity by analyzing data gathered from smartphones' built-in Bluetooth, accelerometer and gyroscope sensors. We extracted 20 statistical features from raw sensor data, which were then classified (< 6ft or not) and regressed (distance estimate) using ML algorithms. We found that elliptical filtering of accelerometer and gyroscope sensors signal improved the performance of ML regression. The most predictive features were z-axis mean and fourth momentum for the accelerometer sensors, z-axis mean y-axis mean for the gyroscope sensor, and advertiser time and mean RSSI for Bluetooth radio. After rigorous evaluation of the performance of 19 ML classification and regression methods, we found that ensemble (boosted and bagged tree) methods and regression trees ML algorithms performed best when using data from a combination of Bluetooth radio, accelerometer and the gyroscope. We were able to classify proximity (< 6ft or not) with 100% accuracy using the accelerometer sensor and with 62%-97% accuracy with the Bluetooth radio.

Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call