Litcius/Paper detail

A Lightweight In-Vehicle Alcohol Detection Using Smart Sensing and Supervised Learning

Qasem Abu Al‐Haija, Moez Krichen

2022Computers26 citationsDOIOpen Access PDF

Abstract

According to the risk investigations of being involved in an accident, alcohol-impaired driving is one of the major causes of motor vehicle accidents. Preventing highly intoxicated persons from driving could potentially save many lives. This paper proposes a lightweight in-vehicle alcohol detection that processes the data generated from six alcohol sensors (MQ-3 alcohol sensors) using an optimizable shallow neural network (O-SNN). The experimental evaluation results exhibit a high-performance detection system, scoring a 99.8% detection accuracy with a very short inferencing delay of 2.22 μs. Hence, the proposed model can be efficiently deployed and used to discover in-vehicle alcohol with high accuracy and low inference overhead as a part of the driver alcohol detection system for safety (DADSS) system aiming at the massive deployment of alcohol-sensing systems that could potentially save thousands of lives annually.

Topics & Concepts

Computer scienceOverhead (engineering)AlcoholSoftware deploymentReal-time computingEmbedded systemInferenceArtificial neural networkArtificial intelligenceComputer securityOperating systemBiochemistryChemistryFire Detection and Safety SystemsAdvanced Chemical Sensor TechnologiesIoT and GPS-based Vehicle Safety Systems