Vehicle driver identification system based on biometric data

The article discusses the problems associated with monitoring the observance of work and rest regimes by taxi drivers, which, together with an increase in the number of taxi services, lead to an increase in the number of road traffic accidents. The most common cause of these accidents, experts call...

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Main Authors: E. S. Kozin, A. V. Bazanov
Format: Article
Language:English
Published: Orenburg State University 2020-07-01
Series:Интеллект. Инновации. Инвестиции
Subjects:
Online Access:http://intellekt-izdanie.osu.ru/en/archive_new/4-2020/4-2020-pp.-133-142.html
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author E. S. Kozin
A. V. Bazanov
author_facet E. S. Kozin
A. V. Bazanov
author_sort E. S. Kozin
collection DOAJ
description The article discusses the problems associated with monitoring the observance of work and rest regimes by taxi drivers, which, together with an increase in the number of taxi services, lead to an increase in the number of road traffic accidents. The most common cause of these accidents, experts call significant excess of working time, leading to fatigue of drivers. It is quite difficult to control work and rest regimes of drivers in the current conditions. One of the effective ways to solve the problem, according to the authors, is a hardware- software complex that works on the basis of computer vision algorithms, which can identify the driver’s identity by recognizing his face, send information to supervisor and integrate into car control systems. The main goal of this article is to reduce the accident rate of taxis and car-sharing vehicles by introducing a face recognition system in them. The scientific novelty of the work lies in the use of new methods of computer vision in solving the problem of reducing the accident rate of automobile transport. The system works as follows: using a video camera while using a car, the system periodically captures and recognizes the image of the driver’s face. If the result is negative, the supervisor receives a notification of non-compliance. The article provides an overview of the functionality of the prototype of the proposed system created by the authors. The system prototype consists of five conditional modules: a face recognition module; module for storing information in a log file and application interaction with a web browser; a module for sending a signal to the serial port for interaction with the hardware (mechanical) part of the project using a programmable microcontroller; a module associated with the operation of the microcontroller and peripheral actuators; multi-platform application wrapper module. System modules are written in Python and are based on the OpenCV computer vision library. The system has the ability to send statistical information about driver identification to the network. It is also possible to interact with the hardware and mechanical components of the car, for example, with a central lock. System modules are written in Python and are based on the OpenCV computer vision library. Such a product will be in demand by companies providing taxi services, car sharing, as well as owners and users of corporate vehicle parks in various industries, for example, in the oil and gas industry.
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spelling doaj.art-8894f825040747b691783e18cb1c42482023-03-23T08:34:09ZengOrenburg State UniversityИнтеллект. Инновации. Инвестиции2077-71752020-07-01413314210.25198/2077-7175-2020-4-133Vehicle driver identification system based on biometric dataE. S. Kozin0A. V. Bazanov1Tyumen Industrial UniversityTyumen Industrial UniversityThe article discusses the problems associated with monitoring the observance of work and rest regimes by taxi drivers, which, together with an increase in the number of taxi services, lead to an increase in the number of road traffic accidents. The most common cause of these accidents, experts call significant excess of working time, leading to fatigue of drivers. It is quite difficult to control work and rest regimes of drivers in the current conditions. One of the effective ways to solve the problem, according to the authors, is a hardware- software complex that works on the basis of computer vision algorithms, which can identify the driver’s identity by recognizing his face, send information to supervisor and integrate into car control systems. The main goal of this article is to reduce the accident rate of taxis and car-sharing vehicles by introducing a face recognition system in them. The scientific novelty of the work lies in the use of new methods of computer vision in solving the problem of reducing the accident rate of automobile transport. The system works as follows: using a video camera while using a car, the system periodically captures and recognizes the image of the driver’s face. If the result is negative, the supervisor receives a notification of non-compliance. The article provides an overview of the functionality of the prototype of the proposed system created by the authors. The system prototype consists of five conditional modules: a face recognition module; module for storing information in a log file and application interaction with a web browser; a module for sending a signal to the serial port for interaction with the hardware (mechanical) part of the project using a programmable microcontroller; a module associated with the operation of the microcontroller and peripheral actuators; multi-platform application wrapper module. System modules are written in Python and are based on the OpenCV computer vision library. The system has the ability to send statistical information about driver identification to the network. It is also possible to interact with the hardware and mechanical components of the car, for example, with a central lock. System modules are written in Python and are based on the OpenCV computer vision library. Such a product will be in demand by companies providing taxi services, car sharing, as well as owners and users of corporate vehicle parks in various industries, for example, in the oil and gas industry.http://intellekt-izdanie.osu.ru/en/archive_new/4-2020/4-2020-pp.-133-142.htmlaccident rateautomobilestime trackingdriverface recognitioncomputer vision
spellingShingle E. S. Kozin
A. V. Bazanov
Vehicle driver identification system based on biometric data
Интеллект. Инновации. Инвестиции
accident rate
automobiles
time tracking
driver
face recognition
computer vision
title Vehicle driver identification system based on biometric data
title_full Vehicle driver identification system based on biometric data
title_fullStr Vehicle driver identification system based on biometric data
title_full_unstemmed Vehicle driver identification system based on biometric data
title_short Vehicle driver identification system based on biometric data
title_sort vehicle driver identification system based on biometric data
topic accident rate
automobiles
time tracking
driver
face recognition
computer vision
url http://intellekt-izdanie.osu.ru/en/archive_new/4-2020/4-2020-pp.-133-142.html
work_keys_str_mv AT eskozin vehicledriveridentificationsystembasedonbiometricdata
AT avbazanov vehicledriveridentificationsystembasedonbiometricdata