A Smartphone-Based Driver Safety Monitoring System Using Data Fusion

This paper proposes a method for monitoring driver safety levels using a data fusion approach based on several discrete data types: eye features, bio-signal variation, in-vehicle temperature, and vehicle speed. The driver safety monitoring system was developed in practice in the form of an applicati...

Full description

Bibliographic Details
Main Authors: Wan-Young Chung, Boon-Giin Lee
Format: Article
Language:English
Published: MDPI AG 2012-12-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/12/12/17536
id doaj-c7a706f6de7f48f8bb22f0984651e99f
record_format Article
spelling doaj-c7a706f6de7f48f8bb22f0984651e99f2020-11-24T23:58:47ZengMDPI AGSensors1424-82202012-12-011212175361755210.3390/s121217536A Smartphone-Based Driver Safety Monitoring System Using Data FusionWan-Young ChungBoon-Giin LeeThis paper proposes a method for monitoring driver safety levels using a data fusion approach based on several discrete data types: eye features, bio-signal variation, in-vehicle temperature, and vehicle speed. The driver safety monitoring system was developed in practice in the form of an application for an Android-based smartphone device, where measuring safety-related data requires no extra monetary expenditure or equipment. Moreover, the system provides high resolution and flexibility. The safety monitoring process involves the fusion of attributes gathered from different sensors, including video, electrocardiography, photoplethysmography, temperature, and a three-axis accelerometer, that are assigned as input variables to an inference analysis framework. A Fuzzy Bayesian framework is designed to indicate the driver’s capability level and is updated continuously in real-time. The sensory data are transmitted via Bluetooth communication to the smartphone device. A fake incoming call warning service alerts the driver if his or her safety level is suspiciously compromised. Realistic testing of the system demonstrates the practical benefits of multiple features and their fusion in providing a more authentic and effective driver safety monitoring.http://www.mdpi.com/1424-8220/12/12/17536driver safetyeye featuresbio-signal variationAndroid-based smartphoneFuzzy Bayesianphotoplethysmographyelectrocardiographytemperature sensorthree-axis accelerometerBluetooth
collection DOAJ
language English
format Article
sources DOAJ
author Wan-Young Chung
Boon-Giin Lee
spellingShingle Wan-Young Chung
Boon-Giin Lee
A Smartphone-Based Driver Safety Monitoring System Using Data Fusion
Sensors
driver safety
eye features
bio-signal variation
Android-based smartphone
Fuzzy Bayesian
photoplethysmography
electrocardiography
temperature sensor
three-axis accelerometer
Bluetooth
author_facet Wan-Young Chung
Boon-Giin Lee
author_sort Wan-Young Chung
title A Smartphone-Based Driver Safety Monitoring System Using Data Fusion
title_short A Smartphone-Based Driver Safety Monitoring System Using Data Fusion
title_full A Smartphone-Based Driver Safety Monitoring System Using Data Fusion
title_fullStr A Smartphone-Based Driver Safety Monitoring System Using Data Fusion
title_full_unstemmed A Smartphone-Based Driver Safety Monitoring System Using Data Fusion
title_sort smartphone-based driver safety monitoring system using data fusion
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2012-12-01
description This paper proposes a method for monitoring driver safety levels using a data fusion approach based on several discrete data types: eye features, bio-signal variation, in-vehicle temperature, and vehicle speed. The driver safety monitoring system was developed in practice in the form of an application for an Android-based smartphone device, where measuring safety-related data requires no extra monetary expenditure or equipment. Moreover, the system provides high resolution and flexibility. The safety monitoring process involves the fusion of attributes gathered from different sensors, including video, electrocardiography, photoplethysmography, temperature, and a three-axis accelerometer, that are assigned as input variables to an inference analysis framework. A Fuzzy Bayesian framework is designed to indicate the driver’s capability level and is updated continuously in real-time. The sensory data are transmitted via Bluetooth communication to the smartphone device. A fake incoming call warning service alerts the driver if his or her safety level is suspiciously compromised. Realistic testing of the system demonstrates the practical benefits of multiple features and their fusion in providing a more authentic and effective driver safety monitoring.
topic driver safety
eye features
bio-signal variation
Android-based smartphone
Fuzzy Bayesian
photoplethysmography
electrocardiography
temperature sensor
three-axis accelerometer
Bluetooth
url http://www.mdpi.com/1424-8220/12/12/17536
work_keys_str_mv AT wanyoungchung asmartphonebaseddriversafetymonitoringsystemusingdatafusion
AT boongiinlee asmartphonebaseddriversafetymonitoringsystemusingdatafusion
AT wanyoungchung smartphonebaseddriversafetymonitoringsystemusingdatafusion
AT boongiinlee smartphonebaseddriversafetymonitoringsystemusingdatafusion
_version_ 1725449801516974080